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%%% -*-BibTeX-*-
%%% ====================================================================
%%%  BibTeX-file{
%%%     author          = "Nelson H. F. Beebe",
%%%     version         = "1.03",
%%%     date            = "25 August 2023",
%%%     time            = "12:27:25 MDT",
%%%     filename        = "tds.bib",
%%%     address         = "University of Utah
%%%                        Department of Mathematics, 110 LCB
%%%                        155 S 1400 E RM 233
%%%                        Salt Lake City, UT 84112-0090
%%%                        USA",
%%%     telephone       = "+1 801 581 5254",
%%%     FAX             = "+1 801 581 4148",
%%%     URL             = "http://www.math.utah.edu/~beebe",
%%%     checksum        = "59852 2121 9256 88051",
%%%     email           = "beebe at math.utah.edu, beebe at acm.org,
%%%                        beebe at computer.org (Internet)",
%%%     codetable       = "ISO/ASCII",
%%%     keywords        = "ACM/IMS Transactions on Data Science
%%%                        (TDS); bibliography; BibTeX",
%%%     license         = "public domain",
%%%     supported       = "yes",
%%%     docstring       = "This is a COMPLETE BibTeX bibliography for
%%%                        ACM/IMS Transactions on Data Science (TDS)
%%%                        (CODEN ????, ISSN 2691-1922).  The journal
%%%                        appears quarterly, and publication began with
%%%                        volume 1, number 1, in February 2020.
%%%
%%%                        Publication terminated with volume 2, number
%%%                        4, in November 2021.  The publisher's
%%%                        announcement says:
%%%
%%%                            ``ACM/IMS Transactions on Data Science
%%%                            will close to submissions on June 1,
%%%                            2021. The journal will re-launch under
%%%                            the name ACM/IMS Journal of Data
%%%                            Science.''
%%%
%%%                        At version 1.03, the COMPLETE journal
%%%                        coverage looked like this:
%%%
%%%                             2020 (  30)    2021 (  39)
%%%
%%%                             Article:         69
%%%
%%%                             Total entries:   69
%%%
%%%                        The journal Web page can be found at:
%%%
%%%                            http://tds.acm.org/
%%%                            https://dl.acm.org/journal/tds
%%%
%%%                        The journal table of contents page is at:
%%%
%%%                            https://dl.acm.org/loi/tds
%%%
%%%                        Qualified subscribers can retrieve the full
%%%                        text of recent articles in PDF form.
%%%
%%%                        The initial draft was extracted from the ACM
%%%                        Web pages.
%%%
%%%                        ACM copyrights explicitly permit abstracting
%%%                        with credit, so article abstracts, keywords,
%%%                        and subject classifications have been
%%%                        included in this bibliography wherever
%%%                        available.  Article reviews have been
%%%                        omitted, until their copyright status has
%%%                        been clarified.
%%%
%%%                        URL keys in the bibliography point to
%%%                        World Wide Web locations of additional
%%%                        information about the entry.
%%%
%%%                        BibTeX citation tags are uniformly chosen
%%%                        as name:year:abbrev, where name is the
%%%                        family name of the first author or editor,
%%%                        year is a 4-digit number, and abbrev is a
%%%                        3-letter condensation of important title
%%%                        words. Citation tags were automatically
%%%                        generated by software developed for the
%%%                        BibNet Project.
%%%
%%%                        In this bibliography, entries are sorted in
%%%                        publication order, using ``bibsort -byvolume.''
%%%
%%%                        The checksum field above contains a CRC-16
%%%                        checksum as the first value, followed by the
%%%                        equivalent of the standard UNIX wc (word
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%%%                        characters.  This is produced by Robert
%%%                        Solovay's checksum utility.",
%%%  }
%%% ====================================================================
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    "\ifx \undefined \TM         \def \TM          {${}^{\sc TM}$} \fi"
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%%% ====================================================================
%%% Acknowledgement abbreviations:
@String{ack-nhfb = "Nelson H. F. Beebe,
                    University of Utah,
                    Department of Mathematics, 110 LCB,
                    155 S 1400 E RM 233,
                    Salt Lake City, UT 84112-0090, USA,
                    Tel: +1 801 581 5254,
                    FAX: +1 801 581 4148,
                    e-mail: \path|beebe@math.utah.edu|,
                            \path|beebe@acm.org|,
                            \path|beebe@computer.org| (Internet),
                    URL: \path|http://www.math.utah.edu/~beebe/|"}

%%% ====================================================================
%%% Journal abbreviations:
@String{j-TDS                   = "ACM Transactions on Data Science
                                  (TDS)"}

%%% ====================================================================
%%% Bibliography entries:
@Article{Ooi:2020:IIE,
  author =       "Beng Chin Ooi",
  title =        "Inaugural Issue Editorial",
  journal =      j-TDS,
  volume =       "1",
  number =       "1",
  pages =        "1:1--1:2",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3368254",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Tue Apr 7 15:14:47 MDT 2020",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3368254",
  acknowledgement = ack-nhfb,
  articleno =    "1",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Chakraborty:2020:EDA,
  author =       "Tanmoy Chakraborty and Noseong Park and Ayush Agarwal
                 and V. S. Subrahmanian",
  title =        "Ensemble Detection and Analysis of Communities in
                 Complex Networks",
  journal =      j-TDS,
  volume =       "1",
  number =       "1",
  pages =        "2:1--2:34",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3313374",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Tue Apr 7 15:14:47 MDT 2020",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3313374",
  abstract =     "Though much work has been done on ensemble clustering
                 in data mining, the application of ensemble methods to
                 community detection in networks is in its infancy. In
                 this article, we propose MeDOF, an ensemble method
                 which performs disjoint, overlapping, \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "2",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Li:2020:GBR,
  author =       "Guohui Li and Qi Chen and Bolong Zheng and Hongzhi Yin
                 and Quoc Viet Hung Nguyen and Xiaofang Zhou",
  title =        "Group-Based Recurrent Neural Networks for {POI}
                 Recommendation",
  journal =      j-TDS,
  volume =       "1",
  number =       "1",
  pages =        "3:1--3:18",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3343037",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Tue Apr 7 15:14:47 MDT 2020",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3343037",
  abstract =     "With the development of mobile Internet, many
                 location-based services have accumulated a large amount
                 of data that can be used for point-of-interest (POI)
                 recommendation. However, there are still challenges in
                 developing an unified framework to \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "3",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Li:2020:MAF,
  author =       "Xiangyang Li and Luis Herranz and Shuqiang Jiang",
  title =        "Multifaceted Analysis of Fine-Tuning in a Deep Model
                 for Visual Recognition",
  journal =      j-TDS,
  volume =       "1",
  number =       "1",
  pages =        "4:1--4:22",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3319500",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Tue Apr 7 15:14:47 MDT 2020",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3319500",
  abstract =     "In recent years, convolutional neural networks (CNNs)
                 have achieved impressive performance for various visual
                 recognition scenarios. CNNs trained on large labeled
                 datasets not only obtain significant performance on
                 most challenging benchmarks but also \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "4",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Ward:2020:PAA,
  author =       "Katrina Ward and Dan Lin and Sanjay Madria",
  title =        "A Parallel Algorithm For Anonymizing Large-scale
                 Trajectory Data",
  journal =      j-TDS,
  volume =       "1",
  number =       "1",
  pages =        "5:1--5:26",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3368639",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Tue Apr 7 15:14:47 MDT 2020",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3368639",
  abstract =     "With the proliferation of location-based services
                 enabled by a large number of mobile devices and
                 applications, the quantity of location data, such as
                 trajectories collected by service providers, is
                 gigantic. If these datasets could be published, then
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "5",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Theil:2020:EFU,
  author =       "Christoph Kilian Theil and Sanja Stajner and Heiner
                 Stuckenschmidt",
  title =        "Explaining Financial Uncertainty through Specialized
                 Word Embeddings",
  journal =      j-TDS,
  volume =       "1",
  number =       "1",
  pages =        "6:1--6:19",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3343039",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Tue Apr 7 15:14:47 MDT 2020",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3343039",
  abstract =     "The detection of vague, speculative, or otherwise
                 uncertain language has been performed in the
                 encyclopedic, political, and scientific domains yet
                 left relatively untouched in finance. However, the
                 latter benefits from public sources of big financial
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "6",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Beigi:2020:SPS,
  author =       "Ghazaleh Beigi and Huan Liu",
  title =        "A Survey on Privacy in Social Media: Identification,
                 Mitigation, and Applications",
  journal =      j-TDS,
  volume =       "1",
  number =       "1",
  pages =        "7:1--7:38",
  month =        mar,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3343038",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Tue Apr 7 15:14:47 MDT 2020",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/abs/10.1145/3343038",
  abstract =     "The increasing popularity of social media has
                 attracted a huge number of people to participate in
                 numerous activities on a daily basis. This results in
                 tremendous amounts of rich user-generated data. These
                 data provide opportunities for researchers and
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "7",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Gan:2020:UMA,
  author =       "Wensheng Gan and Jerry Chun-Wei Lin and Jiexiong Zhang
                 and Philip S. Yu",
  title =        "Utility Mining across Multi-Sequences with
                 Individualized Thresholds",
  journal =      j-TDS,
  volume =       "1",
  number =       "2",
  pages =        "8:1--8:29",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3362070",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3362070",
  abstract =     "Utility-oriented pattern mining is an emerging topic,
                 since it can reveal high-utility patterns from
                 different types of data, which provides more
                 information than the traditional
                 frequency/confidence-based pattern mining models. The
                 utilities of various \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "8",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Yu:2020:MBI,
  author =       "Lei Yu and Guohui Li and Ling Yuan",
  title =        "Maximizing Boosted Influence Spread with Edge Addition
                 in Online Social Networks",
  journal =      j-TDS,
  volume =       "1",
  number =       "2",
  pages =        "9:1--9:21",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3364993",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3364993",
  abstract =     "Influence maximization with application to viral
                 marketing is a well-studied problem of finding a small
                 number of influential users in a social network to
                 maximize the spread of influence under certain
                 influence cascade models. However, almost all
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "9",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Chowdhury:2020:RTP,
  author =       "Ranak Roy Chowdhury and Muhammad Abdullah Adnan and
                 Rajesh K. Gupta",
  title =        "Real-Time Principal Component Analysis",
  journal =      j-TDS,
  volume =       "1",
  number =       "2",
  pages =        "10:1--10:36",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3374750",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3374750",
  abstract =     "We propose a variant of Principal Component Analysis
                 (PCA) that is suited for real-time applications. In the
                 real-time version of the PCA problem, we maintain a
                 window over the most recent data and project every
                 incoming row of data into a lower-. \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "10",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Wu:2020:DST,
  author =       "Gene P. K. Wu and Keith C. C. Chan",
  title =        "Discovery of Spatio-Temporal Patterns in Multivariate
                 Spatial Time Series",
  journal =      j-TDS,
  volume =       "1",
  number =       "2",
  pages =        "11:1--11:22",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3374748",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3374748",
  abstract =     "With the advancement of the computing technology and
                 its wide range of applications, collecting large sets
                 of multivariate time series in multiple geographical
                 locations introduces a problem of identifying
                 interesting spatio-temporal patterns. We \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "11",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Bessa:2020:EDM,
  author =       "Aline Bessa and Juliana Freire and Tamraparni Dasu and
                 Divesh Srivastava",
  title =        "Effective Discovery of Meaningful Outlier
                 Relationships",
  journal =      j-TDS,
  volume =       "1",
  number =       "2",
  pages =        "12:1--12:33",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3385192",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3385192",
  abstract =     "We propose Predictable Outliers in Data-trendS (PODS),
                 a method that, given a collection of temporal datasets,
                 derives data-driven explanations for outliers by
                 identifying meaningful relationships between them.
                 First, we formalize the notion of \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "12",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Nashaat:2020:AGL,
  author =       "Mona Nashaat and Aindrila Ghosh and James Miller and
                 Shaikh Quader",
  title =        "{Asterisk}: Generating Large Training Datasets with
                 Automatic Active Supervision",
  journal =      j-TDS,
  volume =       "1",
  number =       "2",
  pages =        "13:1--13:25",
  month =        jul,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3385188",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3385188",
  abstract =     "Labeling datasets is one of the most expensive
                 bottlenecks in data preprocessing tasks in machine
                 learning. Therefore, organizations, in many domains,
                 are applying weak supervision to produce noisy labels.
                 However, since weak supervision relies on \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "13",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Li:2020:ISI,
  author =       "Yanhua Li and Jie Bao and Zhi-Li Zhang and Saif
                 Benjaafar",
  title =        "Introduction to the Special Issue on Urban Computing
                 and Smart Cities",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "14:1--14:2",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3412392",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3412392",
  acknowledgement = ack-nhfb,
  articleno =    "14",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Sainju:2020:MRS,
  author =       "Arpan Man Sainju and Zhe Jiang",
  title =        "Mapping Road Safety Features from Streetview Imagery:
                 a Deep Learning Approach",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "15:1--15:20",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3362069",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3362069",
  abstract =     "Each year, an average of around 6 million car
                 accidents occur in the United States. Road safety
                 features (e.g., concrete barriers, metal crash
                 barriers, rumble strips) play an important role in
                 preventing or mitigating vehicle crashes. Accurate maps
                 of \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "15",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Tian:2020:UEB,
  author =       "Zhihong Tian and Chaochao Luo and Hui Lu and Shen Su
                 and Yanbin Sun and Man Zhang",
  title =        "User and Entity Behavior Analysis under Urban Big
                 Data",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "16:1--16:19",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3374749",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3374749",
  abstract =     "Recently, the urban network infrastructure has
                 undergone a rapid expansion that is increasingly
                 generating a large quantity of data and transforming
                 our cities into smart cities. However, serious security
                 problems arise with this development with more
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "16",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Xie:2020:UFR,
  author =       "Yiqun Xie and Shashi Shekhar",
  title =        "A Unified Framework for Robust and Efficient Hotspot
                 Detection in Smart Cities",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "17:1--17:29",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3379562",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3379562",
  abstract =     "Given N geo-located point instances (e.g., crime or
                 disease cases) in a spatial domain, we aim to detect
                 sub-regions (i.e., hotspots) that have a higher
                 probability density of generating such instances than
                 the others. Hotspot detection has been widely
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "17",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Ding:2020:TAH,
  author =       "Weilong Ding and Zhuofeng Zhao and Jianwu Wang and Han
                 Li",
  title =        "Task Allocation in Hybrid Big Data Analytics for Urban
                 {IoT} Applications",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "18:1--18:22",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3374751",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3374751",
  abstract =     "In urban Internet of Things (IoT) environments, data
                 generated in real time could be processed by analytical
                 applications in online or offline mode. In the
                 management perspective of runtime environments, such
                 modes can hardly be supported in a unified \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "18",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Yang:2020:SAT,
  author =       "Zhong Yang and Bolong Zheng and Guohui Li and Nguyen
                 Quoc Viet Hung and Guanfeng Liu and Kai Zheng",
  title =        "Searching Activity Trajectories by Exemplar",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "19:1--19:18",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3379561",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3379561",
  abstract =     "The rapid explosion of urban cities has modernized the
                 residents' lives and generated a large amount of data
                 (e.g., human mobility data, traffic data, and
                 geographical data), especially the activity trajectory
                 data that contains spatial and temporal as \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "19",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Xu:2020:AWF,
  author =       "Xin Xu and Yanjie Fu and Jingyi Wu and Yuqi Wang and
                 Zeyu Huang and Zhiguo Fu and Minghao Yin",
  title =        "Adaptive Weighted Finite Mixture Model: Identifying
                 the Feature-Influence of Real Estate",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "20:1--20:16",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3379560",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3379560",
  abstract =     "It is significant for real estate investors to
                 understand how the construction environments and
                 building characteristics impact the housing unit price.
                 However, it is challenging for identifying the complex
                 feature-influence from construction \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "20",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Zeidan:2020:GEL,
  author =       "Ayman Zeidan and Eemil Lagerspetz and Kai Zhao and
                 Petteri Nurmi and Sasu Tarkoma and Huy T. Vo",
  title =        "{GeoMatch}: Efficient Large-scale Map Matching on
                 {Apache Spark}",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "21:1--21:30",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3402904",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3402904",
  abstract =     "We develop GeoMatch as a novel, scalable, and
                 efficient big-data pipeline for large-scale map
                 matching on Apache Spark. GeoMatch improves existing
                 spatial big-data solutions by utilizing a novel spatial
                 partitioning scheme inspired by Hilbert space-.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "21",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Li:2020:PGE,
  author =       "Yan Li and Pratik Kotwal and Pengyue Wang and Yiqun
                 Xie and Shashi Shekhar and William Northrop",
  title =        "Physics-guided Energy-efficient Path Selection Using
                 On-board Diagnostics Data",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "22:1--22:28",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3406596",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3406596",
  abstract =     "Given a spatial graph, an origin and a destination,
                 and on-board diagnostics (OBD) data, the
                 energy-efficient path selection problem aims to find
                 the path with the least expected energy consumption
                 (EEC). Two main objectives of smart cities are
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "22",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Arabghalizi:2020:DDB,
  author =       "Tahereh Arabghalizi and Alexandros Labrinidis",
  title =        "Data-driven Bus Crowding Prediction Models Using
                 Context-specific Features",
  journal =      j-TDS,
  volume =       "1",
  number =       "3",
  pages =        "23:1--23:33",
  month =        oct,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3406962",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:05 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3406962",
  abstract =     "Public transit is one of the first things that come to
                 mind when someone talks about ``smart cities.'' As a
                 result, many technologies, applications, and
                 infrastructure have already been deployed to bring the
                 promise of the smart city to public \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "23",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Hu:2020:ISI,
  author =       "Haibo Hu and Rik Sarkar and Zhengzhang Chen",
  title =        "Introduction to the Special Issue on Retrieving and
                 Learning from {Internet of Things} Data",
  journal =      j-TDS,
  volume =       "1",
  number =       "4",
  pages =        "24:1--24:1",
  month =        dec,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3426368",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:06 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3426368",
  acknowledgement = ack-nhfb,
  articleno =    "24",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Fang:2020:HHR,
  author =       "Liming Fang and Hongwei Zhu and Boqing Lv and Zhe Liu
                 and Weizhi Meng and Yu Yu and Shouling Ji and Zehong
                 Cao",
  title =        "{HandiText}: Handwriting Recognition Based on Dynamic
                 Characteristics with Incremental {LSTM}",
  journal =      j-TDS,
  volume =       "1",
  number =       "4",
  pages =        "25:1--25:18",
  month =        dec,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3385189",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:06 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/cryptography2020.bib;
                 http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3385189",
  abstract =     "The Internet of Things (IoT) is a new manifestation of
                 data science. To ensure the credibility of data about
                 IoT devices, authentication has gradually become an
                 important research topic in the IoT ecosystem. However,
                 traditional graphical passwords and text passwords can
                 cause user's serious memory burdens. Therefore, a
                 convenient method for determining user identity is
                 needed. In this article, we propose a handwriting
                 recognition authentication scheme named HandiText based
                 on behavior and biometrics features. When people write
                 a word by hand, HandiText captures their static
                 biological features and dynamic behavior features
                 during the writing process (writing speed, pressure,
                 etc.). The features are related to habits, which make
                 it difficult for attackers to imitate. We also carry
                 out algorithms comparisons and experiments evaluation
                 to prove the reliability of our scheme. The experiment
                 results show that the Long Short-Term Memory has the
                 best classification accuracy, reaching 99\% while
                 keeping relatively low false-positive rate and
                 false-negative rate. We also test other datasets, the
                 average accuracy of HandiText reach 98\%, with strong
                 generalization ability. Besides, the 324 users we
                 investigated indicated that they are willing to use
                 this scheme on IoT devices.",
  acknowledgement = ack-nhfb,
  articleno =    "25",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Li:2020:TTR,
  author =       "Huan Li and Hua Lu and Gang Chen and Ke Chen and
                 Qinkuang Chen and Lidan Shou",
  title =        "Toward Translating Raw Indoor Positioning Data into
                 Mobility Semantics",
  journal =      j-TDS,
  volume =       "1",
  number =       "4",
  pages =        "26:1--26:37",
  month =        dec,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3385190",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:06 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3385190",
  abstract =     "Indoor mobility analyses are increasingly interesting
                 due to the rapid growth of raw indoor positioning data
                 obtained from IoT infrastructure. However, high-level
                 analyses are still in urgent need of a concise but
                 semantics-oriented representation of \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "26",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Busany:2020:IBQ,
  author =       "Nimrod Busany and Han {Van Der Aa} and Arik
                 Senderovich and Avigdor Gal and Matthias Weidlich",
  title =        "Interval-based Queries over Lossy {IoT} Event
                 Streams",
  journal =      j-TDS,
  volume =       "1",
  number =       "4",
  pages =        "27:1--27:27",
  month =        dec,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3385191",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:06 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3385191",
  abstract =     "Recognising patterns that correlate multiple events
                 over time becomes increasingly important in
                 applications that exploit the Internet of Things,
                 reaching from urban transportation through surveillance
                 monitoring to business workflows. In many real-.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "27",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Schmeisser:2020:CCS,
  author =       "Stephan Schmei{\ss}er and Gregor Schiele",
  title =        "{coSense}: The Collaborative Sensing Middleware for
                 the {Internet}-of-Things",
  journal =      j-TDS,
  volume =       "1",
  number =       "4",
  pages =        "28:1--28:21",
  month =        dec,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3395233",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:06 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3395233",
  abstract =     "We present coSense -the collaborative, fault-tolerant,
                 and adaptive sensing middleware for the
                 Internet-of-Things (IoT). By actively harnessing the
                 greatest asset of the IoT, the sheer number of devices,
                 coSense is able to provide easy data acquisition
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "28",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Elbassuoni:2020:FSO,
  author =       "Shady Elbassuoni and Sihem Amer-Yahia and Ahmad
                 Ghizzawi",
  title =        "Fairness of Scoring in Online Job Marketplaces",
  journal =      j-TDS,
  volume =       "1",
  number =       "4",
  pages =        "29:1--29:30",
  month =        dec,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3402883",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:06 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3402883",
  abstract =     "We study fairness of scoring in online job
                 marketplaces. We focus on group fairness and aim to
                 algorithmically explore how a scoring function, through
                 which individuals are ranked for jobs, treats different
                 demographic groups. Previous work on group-. \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "29",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Yang:2020:MFR,
  author =       "Luoying Yang and Zhou Xu and Jiebo Luo",
  title =        "Measuring Female Representation and Impact in Films
                 over Time",
  journal =      j-TDS,
  volume =       "1",
  number =       "4",
  pages =        "30:1--30:14",
  month =        dec,
  year =         "2020",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3411213",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:06 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3411213",
  abstract =     "Women have always been underrepresented in movies and
                 not until recently has the representation of women in
                 movies improved. To investigate the improvement of
                 female representation and its relationship with a
                 movie's success, we propose a new measure, \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "30",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Shi:2021:NAT,
  author =       "Tian Shi and Yaser Keneshloo and Naren Ramakrishnan
                 and Chandan K. Reddy",
  title =        "Neural Abstractive Text Summarization with
                 Sequence-to-Sequence Models",
  journal =      j-TDS,
  volume =       "2",
  number =       "1",
  pages =        "1:1--1:37",
  month =        jan,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3419106",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:07 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3419106",
  abstract =     "In the past few years, neural abstractive text
                 summarization with sequence-to-sequence (seq2seq)
                 models have gained a lot of popularity. Many
                 interesting techniques have been proposed to improve
                 seq2seq models, making them capable of handling
                 different \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "1",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Li:2021:ISI,
  author =       "Yanhua Li and Jie Bao and Zhi-Li Zhang and Saif
                 Benjaafar",
  title =        "Introduction to the Special Issue on Urban Computing
                 and Smart Cities",
  journal =      j-TDS,
  volume =       "2",
  number =       "1",
  pages =        "2e:1--2e:2",
  month =        jan,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3441679",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:07 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3441679",
  acknowledgement = ack-nhfb,
  articleno =    "2e",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Liu:2021:SBU,
  author =       "Xiuming Liu and Edith Ngai and Dave Zachariah",
  title =        "Scalable Belief Updating for Urban Air Quality
                 Modeling and Prediction",
  journal =      j-TDS,
  volume =       "2",
  number =       "1",
  pages =        "2:1--2:19",
  month =        jan,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3402903",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:07 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3402903",
  abstract =     "Air pollution is one of the major concerns in global
                 urbanization. Data science can help to understand the
                 dynamics of air pollution and build reliable
                 statistical models to forecast air pollution levels. To
                 achieve these goals, one needs to learn the \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "2",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Iyengar:2021:WDD,
  author =       "Srinivasan Iyengar and Stephen Lee and David Irwin and
                 Prashant Shenoy and Benjamin Weil",
  title =        "{WattScale}: a Data-driven Approach for Energy
                 Efficiency Analytics of Buildings at Scale",
  journal =      j-TDS,
  volume =       "2",
  number =       "1",
  pages =        "3:1--3:25",
  month =        jan,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3406961",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:07 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3406961",
  abstract =     "Buildings consume over 40\% of the total energy in
                 modern societies, and improving their energy efficiency
                 can significantly reduce our energy footprint. In this
                 article, we present WattScale, a data-driven approach
                 to identify the least energy-efficient \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "3",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Jiang:2021:TUH,
  author =       "Renhe Jiang and Xuan Song and Zipei Fan and Tianqi Xia
                 and Zhaonan Wang and Quanjun Chen and Zekun Cai and
                 Ryosuke Shibasaki",
  title =        "Transfer Urban Human Mobility via {POI} Embedding over
                 Multiple Cities",
  journal =      j-TDS,
  volume =       "2",
  number =       "1",
  pages =        "4:1--4:26",
  month =        jan,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3416914",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:07 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3416914",
  abstract =     "Rapidly developing location acquisition technologies
                 provide a powerful tool for understanding and
                 predicting human mobility in cities, which is very
                 significant for urban planning, traffic regulation, and
                 emergency management. However, with the \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "4",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Babicheva:2021:EVR,
  author =       "Tatiana Babicheva and Matej Cebecauer and Dominique
                 Barth and Wilco Burghout and Le{\"\i}la Kloul",
  title =        "Empty Vehicle Redistribution with Time Windows in
                 Autonomous Taxi Systems",
  journal =      j-TDS,
  volume =       "2",
  number =       "1",
  pages =        "5:1--5:22",
  month =        jan,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3416915",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:07 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3416915",
  abstract =     "In this article, we investigate empty vehicle
                 redistribution algorithms with time windows for
                 personal rapid transit or autonomous station-based taxi
                 services, from a passenger service perspective. We
                 present an Index Based Redistribution Time Limited
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "5",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Molinaro:2021:SST,
  author =       "Cristian Molinaro and Chiara Pulice and Anja Subasic
                 and Abigail Bartolome and V. S. Subrahmanian",
  title =        "{STAR: Summarizing Timed Association Rules}",
  journal =      j-TDS,
  volume =       "2",
  number =       "1",
  pages =        "6:1--6:36",
  month =        jan,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3419107",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Wed Mar 10 06:28:07 MST 2021",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3419107",
  abstract =     "Timed association rules (TARs) generalize classical
                 association rules (ARs) so that we can express temporal
                 dependencies of the form ``If $X$ is true at time $t$,
                 then $Y$ will likely be true at time $ (t + \tau)$.''
                 As with ARs, solving the TAR mining problem can
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "6",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Zoppi:2021:UAD,
  author =       "Tommaso Zoppi and Andrea Ceccarelli and Tommaso
                 Capecchi and Andrea Bondavalli",
  title =        "Unsupervised Anomaly Detectors to Detect Intrusions in
                 the Current Threat Landscape",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "7:1--7:26",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3441140",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3441140",
  abstract =     "Anomaly detection aims at identifying unexpected
                 fluctuations in the expected behavior of a given
                 system. It is acknowledged as a reliable answer to the
                 identification of zero-day attacks to such extent,
                 several ML algorithms that suit for binary \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "7",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Cheng:2021:MTP,
  author =       "Lu Cheng and Ruocheng Guo and Yasin N. Silva and
                 Deborah Hall and Huan Liu",
  title =        "Modeling Temporal Patterns of Cyberbullying Detection
                 with Hierarchical Attention Networks",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "8:1--8:23",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3441141",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3441141",
  abstract =     "Cyberbullying is rapidly becoming one of the most
                 serious online risks for adolescents. This has
                 motivated work on machine learning methods to automate
                 the process of cyberbullying detection, which have so
                 far mostly viewed cyberbullying as one-off \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "8",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Zhou:2021:ISI,
  author =       "Ke Zhou and Jingkuan Song",
  title =        "Introduction to the Special Issue on Learning-based
                 Support for Data Science Applications",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "9:1--9:1",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3450751",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3450751",
  acknowledgement = ack-nhfb,
  articleno =    "9",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Li:2021:TAN,
  author =       "Yamin Li and Jun Zhang and Zhongliang Yang and Ru
                 Zhang",
  title =        "Topic-aware Neural Linguistic Steganography Based on
                 Knowledge Graphs",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "10:1--10:13",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3418598",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3418598",
  abstract =     "The core challenge of steganography is always how to
                 improve the hidden capacity and the concealment. Most
                 current generation-based linguistic steganography
                 methods only consider the probability distribution
                 between text characters, and the emotion and \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "10",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Liu:2021:DHB,
  author =       "Yu Liu and Yangtao Wang and Lianli Gao and Chan Guo
                 and Yanzhao Xie and Zhili Xiao",
  title =        "Deep Hash-based Relevance-aware Data Quality
                 Assessment for Image Dark Data",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "11:1--11:26",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3420038",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3420038",
  abstract =     "Data mining can hardly solve but always faces a
                 problem that there is little meaningful information
                 within the dataset serving a given requirement. Faced
                 with multiple unknown datasets, to allocate data mining
                 resources to acquire more desired data, it is
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "11",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Zhang:2021:SIR,
  author =       "Xinyu Zhang and Xiaocui Li and Xiao-Yuan Jing and Li
                 Cheng",
  title =        "Simultaneous Image Reconstruction and Feature Learning
                 with {$3$D-CNNs} for Image Set-Based Classification",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "12:1--12:13",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3420037",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3420037",
  abstract =     "Image set-based classification has attracted
                 substantial research interest because of its broad
                 applications. Recently, lots of methods based on
                 feature learning or dictionary learning have been
                 developed to solve this problem, and some of them have
                 made \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "12",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Yang:2021:BRP,
  author =       "Ru Yang and Yuhui Deng and Yi Zhou and Ping Huang",
  title =        "Boosting the Restoring Performance of Deduplication
                 Data by Classifying Backup Metadata",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "13:1--13:16",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3437261",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3437261",
  abstract =     "Restoring data is the main purpose of data backup in
                 storage systems. The fragmentation issue, caused by
                 physically scattering logically continuous data across
                 a variety of disk locations, poses a negative impact on
                 the restoring performance of a \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "13",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Zandavi:2021:MUR,
  author =       "Seid Miad Zandavi and Vera Chung and Ali Anaissi",
  title =        "Multi-user Remote Lab: Timetable Scheduling Using
                 Simplex Nondominated Sorting Genetic Algorithm",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "14:1--14:13",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3437260",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3437260",
  abstract =     "The scheduling of multi-user remote laboratories is
                 modeled as a multimodal function for the proposed
                 optimization algorithm. The hybrid optimization
                 algorithm, hybridization of the Nelder--Mead Simplex
                 algorithm, and Non-dominated Sorting Genetic \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "14",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Gao:2021:MGD,
  author =       "Hongchao Gao and Yujia Li and Jiao Dai and Xi Wang and
                 Jizhong Han and Ruixuan Li",
  title =        "Multi-granularity Deep Local Representations for
                 Irregular Scene Text Recognition",
  journal =      j-TDS,
  volume =       "2",
  number =       "2",
  pages =        "15:1--15:18",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3446971",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:14 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3446971",
  abstract =     "Recognizing irregular text from natural scene images
                 is challenging due to the unconstrained appearance of
                 text, such as curvature, orientation, and distortion.
                 Recent recognition networks regard this task as a text
                 sequence labeling problem and most \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "15",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Tian:2021:TST,
  author =       "Xiancai Tian and Baihua Zheng and Yazhe Wang and
                 Hsiao-Ting Huang and Chih-Chieh Hung",
  title =        "{TRIPDECODER}: Study Travel Time Attributes and Route
                 Preferences of Metro Systems from Smart Card Data",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "16:1--16:21",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3430768",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3430768",
  abstract =     "In this article, we target at recovering the exact
                 routes taken by commuters inside a metro system that
                 are not captured by an Automated Fare Collection (AFC)
                 system and hence remain unknown. We strategically
                 propose two inference tasks to handle the \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "16",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Steadman:2021:KDS,
  author =       "Liam Steadman and Nathan Griffiths and Stephen Jarvis
                 and Mark Bell and Shaun Helman and Caroline Wallbank",
  title =        "{kD-STR}: a Method for Spatio-Temporal Data Reduction
                 and Modelling",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "17:1--17:31",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3439334",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3439334",
  abstract =     "Analysing and learning from spatio-temporal datasets
                 is an important process in many domains, including
                 transportation, healthcare and meteorology. In
                 particular, data collected by sensors in the
                 environment allows us to understand and model the
                 processes \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "17",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Nashaat:2021:TUR,
  author =       "Mona Nashaat and Aindrila Ghosh and James Miller and
                 Shaikh Quader",
  title =        "{TabReformer}: Unsupervised Representation Learning
                 for Erroneous Data Detection",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "18:1--18:29",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447541",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447541",
  abstract =     "Error detection is a crucial preliminary phase in any
                 data analytics pipeline. Existing error detection
                 techniques typically target specific types of errors.
                 Moreover, most of these detection models either require
                 user-defined rules or ample hand-labeled \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "18",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Behrens:2021:DCC,
  author =       "Hans Walter Behrens and K. Sel{\c{c}}uk Candan and
                 Xilun Chen and Yash Garg and Mao-Lin Li and Xinsheng Li
                 and Sicong Liu and Maria Luisa Sapino and Md Shadab and
                 Dalton Turner and Magesh Vijayakumaren",
  title =        "{DataStorm}: Coupled, Continuous Simulations for
                 Complex Urban Environments",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "19:1--19:37",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447572",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447572",
  abstract =     "Urban systems are characterized by complexity and
                 dynamicity. Data-driven simulations represent a
                 promising approach in understanding and predicting
                 complex dynamic processes in the presence of shifting
                 demands of urban systems. Yet, today's silo-based,
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "19",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Jia:2021:PGM,
  author =       "Xiaowei Jia and Jared Willard and Anuj Karpatne and
                 Jordan S. Read and Jacob A. Zwart and Michael Steinbach
                 and Vipin Kumar",
  title =        "Physics-Guided Machine Learning for Scientific
                 Discovery: an Application in Simulating Lake
                 Temperature Profiles",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "20:1--20:26",
  month =        may,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447814",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447814",
  abstract =     "Physics-based models are often used to study
                 engineering and environmental systems. The ability to
                 model these systems is the key to achieving our future
                 environmental sustainability and improving the quality
                 of human life. This article focuses on \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "20",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Gramaglia:2021:GTP,
  author =       "Marco Gramaglia and Marco Fiore and Angelo Furno and
                 Razvan Stanica",
  title =        "{GLOVE}: Towards Privacy-Preserving Publishing of
                 Record-Level-Truthful Mobile Phone Trajectories",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "21:1--21:36",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3451178",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3451178",
  abstract =     "Datasets of mobile phone trajectories collected by
                 network operators offer an unprecedented opportunity to
                 discover new knowledge from the activity of large
                 populations of millions. However, publishing such
                 trajectories also raises significant privacy \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "21",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Chakraborty:2021:ATN,
  author =       "Vishal Chakraborty and Theo Delemazure and Benny
                 Kimelfeld and Phokion G. Kolaitis and Kunal Relia and
                 Julia Stoyanovich",
  title =        "Algorithmic Techniques for Necessary and Possible
                 Winners",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "22:1--22:23",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3458472",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3458472",
  abstract =     "We investigate the practical aspects of computing the
                 necessary and possible winners in elections over
                 incomplete voter preferences. In the case of the
                 necessary winners, we show how to implement and
                 accelerate the polynomial-time algorithm of Xia and
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "22",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Song:2021:PPC,
  author =       "Jie Song and Qiang He and Feifei Chen and Ye Yuan and
                 Ge Yu",
  title =        "{PoBery}: Possibly-complete Big Data Queries with
                 Probabilistic Data Placement and Scanning",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "23:1--23:28",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465375",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465375",
  abstract =     "In big data query processing, there is a trade-off
                 between query accuracy and query efficiency, for
                 example, sampling query approaches trade-off query
                 completeness for efficiency. In this article, we argue
                 that query performance can be significantly \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "23",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Dey:2021:SRC,
  author =       "Paramita Dey and Subhayan Bhattacharya and Sarbani
                 Roy",
  title =        "A Survey on the Role of Centrality as Seed Nodes for
                 Information Propagation in Large Scale Network",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "24:1--24:25",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3465374",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3465374",
  abstract =     "From the popular concept of six-degree separation,
                 social networks are generally analyzed in the
                 perspective of small world networks where centrality of
                 nodes play a pivotal role in information propagation.
                 However, working with a large dataset of a scale-.
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "24",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Leng:2021:TEA,
  author =       "Yan Leng and Alejandro Noriega and Alex Pentland",
  title =        "Tourism Event Analytics with Mobile Phone Data",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "25:1--25:22",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3479975",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3479975",
  abstract =     "Tourism has been an increasingly significant
                 contributor to the economy, society, and environment.
                 Policy-making and research on tourism traditionally
                 rely on surveys and economic datasets, which are based
                 on small samples and depict tourism dynamics at a
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "25",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Maji:2021:CUF,
  author =       "Subhadip Maji and Smarajit Bose",
  title =        "{CBIR} Using Features Derived by Deep Learning",
  journal =      j-TDS,
  volume =       "2",
  number =       "3",
  pages =        "26:1--26:24",
  month =        aug,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3470568",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:15 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3470568",
  abstract =     "In a Content-based Image Retrieval (CBIR) System, the
                 task is to retrieve similar images from a large
                 database given a query image. The usual procedure is to
                 extract some useful features from the query image and
                 retrieve images that have a similar set of \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "26",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Du:2021:AED,
  author =       "Zhekai Du and Jingjing Li and Lei Zhu and Ke Lu and
                 Heng Tao Shen",
  title =        "Adversarial Energy Disaggregation",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "27:1--27:16",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3477301",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:16 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3477301",
  abstract =     "Energy disaggregation, also known as non-intrusive
                 load monitoring (NILM), challenges the problem of
                 separating the whole-home electricity usage into
                 appliance-specific individual consumptions, which is a
                 typical application of data analysis. NILM aims to
                 \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "27",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Desmet:2021:RDP,
  author =       "Chance Desmet and Diane J. Cook",
  title =        "Recent Developments in Privacy-preserving Mining of
                 Clinical Data",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "28:1--28:32",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3447774",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:16 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3447774",
  abstract =     "With the dramatic improvements in both the capability
                 to collect personal data and the capability to analyze
                 large amounts of data, increasingly sophisticated and
                 personal insights are being drawn. These insights are
                 valuable for clinical applications but \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "28",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Zhang:2021:HSS,
  author =       "Jiaru Zhang and Ruhui Ma and Tao Song and Yang Hua and
                 Zhengui Xue and Chenyang Guan and Haibing Guan",
  title =        "Hierarchical Satellite System Graph for Approximate
                 Nearest Neighbor Search on Big Data",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "32:1--32:15",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3488377",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:16 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3488377",
  abstract =     "Approximate nearest neighbor search is a classical
                 problem in data science, which is widely applied in
                 many fields. With the rapid growth of data in the real
                 world, it becomes more and more important to speed up
                 the nearest neighbor search process. \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "32",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Gao:2021:QTN,
  author =       "Yuan Gao and Laurence T. Yang and Dehua Zheng and Jing
                 Yang and Yaliang Zhao",
  title =        "Quantized Tensor Neural Network",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "33:1--33:18",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3491255",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:16 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3491255",
  abstract =     "Tensor network as an effective computing framework for
                 efficient processing and analysis of high-dimensional
                 data has been successfully applied in many fields.
                 However, the performance of traditional tensor networks
                 still cannot match the strong fitting \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "33",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Ding:2021:DPD,
  author =       "Xiaofeng Ding and Lin Chen and Pan Zhou and Wenbin
                 Jiang and Hai Jin",
  title =        "Differentially Private Deep Learning with Iterative
                 Gradient Descent Optimization",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "34:1--34:27",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3491254",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:16 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3491254",
  abstract =     "Deep learning has achieved great success in various
                 areas and its success is closely linked to the
                 availability of massive data. But in general, a large
                 dataset could include sensitive data and therefore the
                 model should have the capability to avoid \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "34",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Agarwal:2021:STS,
  author =       "Mridul Agarwal and Vaneet Aggarwal and Abhishek K.
                 Umrawal and Christopher J. Quinn",
  title =        "Stochastic Top {$K$}-Subset Bandits with Linear Space
                 and Non-Linear Feedback with Applications to Social
                 Influence Maximization",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "38:1--38:39",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3507787",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Thu Feb 17 07:13:16 MST 2022",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3507787",
  abstract =     "There are numerous real-world problems where a user
                 must make decisions under uncertainty. For the problem
                 of influence maximization on a social network, for
                 example, the user must select a set of K influencers
                 who will jointly have a large influence on \ldots{}",
  acknowledgement = ack-nhfb,
  articleno =    "38",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Xia:2021:SBA,
  author =       "Feng Xia and Teng Guo and Xiaomei Bai and Adrian
                 Shatte and Zitao Liu and Jiliang Tang",
  title =        "{SUMMER}: Bias-aware Prediction of Graduate Employment
                 Based on Educational Big Data",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "39:1--39:??",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510361",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Fri Aug 25 12:23:02 MDT 2023",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510361",
  abstract =     "The failure of obtaining employment could lead to
                 serious psychosocial outcomes such as depression and
                 substance abuse, especially for college students who
                 \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "",
  articleno =    "39",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Goodman:2021:DBP,
  author =       "Joel Goodman and Sharham Sarkani and Thomas Mazzuchi",
  title =        "Distance-based Probabilistic Data Augmentation for
                 Synthetic Minority Oversampling",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "40:1--40:??",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3510834",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Fri Aug 25 12:23:02 MDT 2023",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3510834",
  abstract =     "Class imbalance can adversely affect the performance
                 of machine learning for prediction and classification.
                 One approach to address the class imbalance \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "",
  articleno =    "40",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Ahmed:2021:SAP,
  author =       "Shibbir Ahmed and Md Johirul Islam and Hridesh Rajan",
  title =        "Semantics and Anomaly Preserving Sampling Strategy for
                 Large-Scale Time Series Data",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "41:1--41:??",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3511918",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Fri Aug 25 12:23:02 MDT 2023",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3511918",
  abstract =     "We propose PASS, a O ( n ) algorithm for data
                 reduction that is specifically aimed at preserving the
                 semantics of time series data visualization in the form
                 of line \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "",
  articleno =    "41",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Gan:2021:TRM,
  author =       "Wensheng Gan and Guoting Chen and Hongzhi Yin and
                 Philippe Fournier-Viger and Chien-Ming Chen and Philip
                 S. Yu",
  title =        "Towards Revenue Maximization with Popular and
                 Profitable Products",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "42:1--42:??",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3488058",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Fri Aug 25 12:23:02 MDT 2023",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3488058",
  abstract =     "Economic-wise, a common goal for companies conducting
                 marketing is to maximize the return revenue/profit by
                 utilizing the various effective \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "",
  articleno =    "42",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Dutta:2021:BDC,
  author =       "Hridoy Sankar Dutta and Tanmoy Chakraborty",
  title =        "Blackmarket-Driven Collusion on Online Media: a
                 Survey",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "43:1--43:??",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3517931",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Fri Aug 25 12:23:02 MDT 2023",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3517931",
  abstract =     "Online media platforms have enabled users to connect
                 with individuals and organizations, and share their
                 thoughts. Other than connectivity, these \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "",
  articleno =    "43",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}

@Article{Wang:2021:TBD,
  author =       "Chaoyang Wang and Zhiqiang Guo and Jianjun Li and
                 Guohui Li and Peng Pan",
  title =        "A Text-based Deep Reinforcement Learning Framework
                 Using Self-supervised Graph Representation for
                 Interactive Recommendation",
  journal =      j-TDS,
  volume =       "2",
  number =       "4",
  pages =        "44:1--44:??",
  month =        nov,
  year =         "2021",
  CODEN =        "????",
  DOI =          "https://doi.org/10.1145/3522596",
  ISSN =         "2691-1922",
  ISSN-L =       "2691-1922",
  bibdate =      "Fri Aug 25 12:23:02 MDT 2023",
  bibsource =    "http://www.math.utah.edu/pub/tex/bib/tds.bib",
  URL =          "https://dl.acm.org/doi/10.1145/3522596",
  abstract =     "Due to its nature of learning from dynamic
                 interactions and planning for long-run performance,
                 Reinforcement Learning (RL) has attracted much
                 attention in \ldots{}",
  acknowledgement = ack-nhfb,
  ajournal =     "",
  articleno =    "44",
  fjournal =     "ACM Transactions on Data Science",
  journal-URL =  "https://dl.acm.org/loi/tds",
}