This work is licensed under the Creative Commons Attribution 4.0 International License.
Acute Market Reports. (2020). Global big data analytics market size, market share, application analysis, regional outlook, growth trends, key players, competitive strategies and forecasts, 2019 to 2027. Retrieved from https://www.researchandmarkets.com/reports/4992328/Acute Market Reports2020Global big data analytics market size, market share, application analysis, regional outlook, growth trends, key players, competitive strategies and forecasts, 2019 to 2027Retrieved from https://www.researchandmarkets.com/reports/4992328/Search in Google Scholar
Adam, R. (1991). Laws for the lawless: Ethics in (information) science. Journal of Information Science, 17, 357–372.AdamR.1991Laws for the lawless: Ethics in (information) scienceJournal of Information Science1735737210.1177/016555159101700603Search in Google Scholar
Ajibade, P., & Mutula, S.M. (2020). Big data research outputs in the library and information science. African Journal of Libraries, Archives, and Information Science, 30(1), 49–60.AjibadeP.MutulaS.M.2020Big data research outputs in the library and information scienceAfrican Journal of Libraries, Archives, and Information Science3014960Search in Google Scholar
Andres, M.C. (2016). Ethical differences: A literature review of the ethics of competitive intelligence for the LIS professional. Journal of Library and Information Sciences, 4(1), 1–15.AndresM.C.2016Ethical differences: A literature review of the ethics of competitive intelligence for the LIS professionalJournal of Library and Information Sciences4111510.15640/jlis.v4n1a1Search in Google Scholar
Antell, K., Bales Foote, J., Turner, J., & Shults, B. (2014). Dealing with data: Science librarians’ participation in data management at Association of Research Libraries institutions. College and Research Libraries, 75(4), 557–574.AntellK.Bales FooteJ.TurnerJ.ShultsB.2014Dealing with data: Science librarians’ participation in data management at Association of Research Libraries institutionsCollege and Research Libraries75455757410.5860/crl.75.4.557Search in Google Scholar
Aragon, C., Hutto, C., Echenique, A., Fiore-Gartland, B., Huang, Y., Kim, J., …, & Bayer, J. (2016). Developing a research agenda for human-centered data science. ACM Conference on Computer Supported Cooperative Work and Social Computing Companion, 19, 529–535.AragonC.HuttoC.EcheniqueA.Fiore-GartlandB.HuangY.KimJ.BayerJ.2016Developing a research agenda for human-centered data scienceACM Conference on Computer Supported Cooperative Work and Social Computing Companion1952953510.1145/2818052.2855518Search in Google Scholar
Ball, G.H., & Hall, D.J. (1967). A clustering technique for summarizing multivariate data. Behavioral Science, 12(2), 153–155.BallG.H.HallD.J.1967A clustering technique for summarizing multivariate dataBehavioral Science12215315510.1002/bs.38301202106030099Search in Google Scholar
Ballantyne, A. (2020). How should we think about clinical data ownership? Journal of Medical Ethics, 46, 289–294.BallantyneA.2020How should we think about clinical data ownership?Journal of Medical Ethics4628929410.1136/medethics-2018-105340727918331911499Search in Google Scholar
Banterle, F. (2019). Data ownership in the data economy: A European dilemma. In Synodinou, T.E., Jougleux, P., Markou, C., & Prastitou, T. (eds.), EU Internet law in the digital era. New York, NY: Springer. https://doi.org/10.1007/978-3-030-25579-4_9BanterleF.2019Data ownership in the data economy: A European dilemmaInSynodinouT.E.JougleuxP.MarkouC.PrastitouT.(eds.),EU Internet law in the digital eraNew York, NYSpringerhttps://doi.org/10.1007/978-3-030-25579-4_910.1007/978-3-030-25579-4_9Search in Google Scholar
Bar-Ilan, J. (2007a). Google bombing from a time perspective. Journal of Computer-Mediated Communication, 12(3), 910–938. https://doi.org/10.1111/j.1083-6101.2007.00356.xBar-IlanJ.2007aGoogle bombing from a time perspectiveJournal of Computer-Mediated Communication123910938https://doi.org/10.1111/j.1083-6101.2007.00356.x10.1111/j.1083-6101.2007.00356.xSearch in Google Scholar
Bar-Ilan, J. (2007b). Manipulating search engine algorithms: The case of Google. Journal of Information, Communication and Ethics in Society, 5(2/3), 155–166.Bar-IlanJ.2007bManipulating search engine algorithms: The case of GoogleJournal of Information, Communication and Ethics in Society52/315516610.1108/14779960710837623Search in Google Scholar
Bar-Ilan, J. (2008). Informetrics at the beginning of the 21st century: A review. Journal of Informetrics, 2(1), 1–52.Bar-IlanJ.2008Informetrics at the beginning of the 21st century: A reviewJournal of Informetrics2115210.1016/j.joi.2007.11.001Search in Google Scholar
Barocas, S., & Boyd, B. (2017). Computing ethics: Engaging the ethics of data science in practice. Communications of the ACM, 60(11), 23–25.BarocasS.BoydB.2017Computing ethics: Engaging the ethics of data science in practiceCommunications of the ACM6011232510.1145/3144172Search in Google Scholar
Bates, M.J. (1999). The invisible substrate of information science. Journal of the American Society for Information Science, 50(12), 1043–1050. https://doi.org/10.1002/(SICI)1097-4571(1999)50:12%3C1043::AID-ASI1%3E3.0.CO;2-XBatesM.J.1999The invisible substrate of information scienceJournal of the American Society for Information Science501210431050https://doi.org/10.1002/(SICI)1097-4571(1999)50:12%3C1043::AID-ASI1%3E3.0.CO;2-X10.1002/(SICI)1097-4571(1999)50:12<1043::AID-ASI1>3.0.CO;2-XSearch in Google Scholar
Bates, M.J. (2005). Information and knowledge: An evolutionary framework for information science. Information Research, 10(4), paper 239.BatesM.J.2005Information and knowledge: An evolutionary framework for information scienceInformation Research104paper 239.Search in Google Scholar
Bates, M.J. (2015). The information professions: Knowledge, memory, heritage. Information Research, 20(1), paper 655. http://InformationR.net/ir/20-1/paper655.htmlBatesM.J.2015The information professions: Knowledge, memory, heritageInformation Research201paper 655. http://InformationR.net/ir/20-1/paper655.htmlSearch in Google Scholar
Bath, P.A., Craigs, C., Maheswaran, R., Raymond, J., & Willett, P. (2005). Use of graph thoery to identify patterns of deprivation and high morbidity and mortality in public health data sets. Journal of the American Medical Informatics Association, 12(6), 630–641.BathP.A.CraigsC.MaheswaranR.RaymondJ.WillettP.2005Use of graph thoery to identify patterns of deprivation and high morbidity and mortality in public health data setsJournal of the American Medical Informatics Association12663064110.1197/jamia.M1714Search in Google Scholar
Batts, N.C. (1966). Data analysis of science monograph order/cataloging forms. Special Libraries, 57, 583–586.BattsN.C.1966Data analysis of science monograph order/cataloging formsSpecial Libraries57583586Search in Google Scholar
Bawden, D., & Robinson, L. (2020). “The dearest of our possessions”: Applying Floridi's information privacy concept in models of information behavior and information literacy. Journal of the Association for Information Science and Technology, 71(9), 1030–1043.BawdenD.RobinsonL.2020“The dearest of our possessions”: Applying Floridi's information privacy concept in models of information behavior and information literacyJournal of the Association for Information Science and Technology7191030104310.1002/asi.24367Search in Google Scholar
Belkin, N.J. (1980). Anomalous states of knowledge as a basis for information retrieval. Canadian Journal of Information and Library Science, 5, 133–143.BelkinN.J.1980Anomalous states of knowledge as a basis for information retrievalCanadian Journal of Information and Library Science5133143Search in Google Scholar
Bell, A.G. (1881). The production of sound by radiant energy. Science, 48, 242–253.BellA.G.1881The production of sound by radiant energyScience4824225310.1126/science.os-2.48.242Search in Google Scholar
Berman, F., Rutenbar, R., Hailpern, B., Christensen, H. Davidson, S., Estrin, D., …, Szalay, A.S. (2018). Realizing the potential of data science. Communications of the ACM, 61(4), 67–72.BermanF.RutenbarR.HailpernB.ChristensenH.DavidsonS.EstrinD.SzalayA.S.2018Realizing the potential of data scienceCommunications of the ACM614677210.1145/3188721Search in Google Scholar
Blum, A., Hopcroft, J., & Kannan, R. (2020). Foundations of data sccience. Cambridge, UK: University Printing House.BlumA.HopcroftJ.KannanR.2020Foundations of data sccienceCambridge, UKUniversity Printing House10.1017/9781108755528Search in Google Scholar
Boole, G. (1847). The mathematical analysis of logic. Cambridge, MA: MacMillan, Barclay, and MacMillan.BooleG.1847The mathematical analysis of logicCambridge, MAMacMillan, Barclay, and MacMillanSearch in Google Scholar
Borko, H. (1968). Information science: What is it? American Documentation, 19(1), 3–5.BorkoH.1968Information science: What is it?American Documentation1913510.1002/asi.5090190103Search in Google Scholar
Bozdag, E. (2013). Bias in algorithmic filtering and personalization. Ethics and Information Technology, 15(3), 209–227.BozdagE.2013Bias in algorithmic filtering and personalizationEthics and Information Technology15320922710.1007/s10676-013-9321-6Search in Google Scholar
Brase, J., & Farquhar, A. (2011). Access to research data. D-Lib Magazine, 17(1/2). https://doi.org/10.1045/january2011-braseBraseJ.FarquharA.2011Access to research dataD-Lib Magazine171/2https://doi.org/10.1045/january2011-brase10.1045/january2011-braseSearch in Google Scholar
Brennan, P.F., Chiang, M.F., & Ohno-Machado, L. (2018). Biomedical informatics and data science: Evolving fields with significant overlap. Journal of the American Medical Informatics Association, 25(1), 2–3.BrennanP.F.ChiangM.F.Ohno-MachadoL.2018Biomedical informatics and data science: Evolving fields with significant overlapJournal of the American Medical Informatics Association2512310.1093/jamia/ocx146764713529267964Search in Google Scholar
Butler, P. (1951). Librarianship as a profession. The Library Quarterly, 21(4), 235–247. https://doi.org/10.1086/617815ButlerP.1951Librarianship as a professionThe Library Quarterly214235247https://doi.org/10.1086/61781510.1086/617815Search in Google Scholar
Cao, L. (2017). Data science: Challenges and directions. Communications of the ACM, 60(8), 59–68.CaoL.2017Data science: Challenges and directionsCommunications of the ACM608596810.1145/3015456Search in Google Scholar
Carlin, A.P. (2003). Disciplinary debates and bases of interdisciplinary studies: The place of research ethics in library and information science. Library and Information Science Research, 25, 3–18.CarlinA.P.2003Disciplinary debates and bases of interdisciplinary studies: The place of research ethics in library and information scienceLibrary and Information Science Research2531810.1016/S0740-8188(02)00163-9Search in Google Scholar
Cassileth, B.R., Zupkis, R.V., Sutton-Smith, K., & March, V. (1980). Informed consent: Why are its goals imperfectly realized? New England Journal of Medicine, 302, 896–900.CassilethB.R.ZupkisR.V.Sutton-SmithK.MarchV.1980Informed consent: Why are its goals imperfectly realized?New England Journal of Medicine30289690010.1056/NEJM1980041730216057360175Search in Google Scholar
Chen, C., Haddad, D., Selsky, J., Hoffman, J.E., Kravitz, R.L., Estrin, D.E., & Sim, I. (2012). Making sense of mobile health data: An open architecture to improve individual- and population-level health. Journal of Medical Internet Research, 14(4), pe112–e112.ChenC.HaddadD.SelskyJ.HoffmanJ.E.KravitzR.L.EstrinD.E.SimI.2012Making sense of mobile health data: An open architecture to improve individual- and population-level healthJournal of Medical Internet Research144pe112e11210.2196/jmir.2152351069222875563Search in Google Scholar
Chen, F., Bollen, K.A., Paxton, P., Curran, P.J., & Kirby, J.B. (2001). Improper solutions in structural equation models: Causes, consequences, and strategies. Sociological Methods and Research, 29(4), 468–508.ChenF.BollenK.A.PaxtonP.CurranP.J.KirbyJ.B.2001Improper solutions in structural equation models: Causes, consequences, and strategiesSociological Methods and Research29446850810.1177/0049124101029004003Search in Google Scholar
Chohdary, N.I., Asghar, M.B., & Al Shaheer, M.A. (2021). Predicting LIS scholarly research directions in the era of data science. Library Philosophy and Practice, article 6328. https://digitalcommons.unl.edu/libphilprac/6328ChohdaryN.I.AsgharM.B.Al ShaheerM.A.2021Predicting LIS scholarly research directions in the era of data scienceLibrary Philosophy and Practicearticle 6328. https://digitalcommons.unl.edu/libphilprac/6328Search in Google Scholar
Christopherson, L., Scott, E., Mandal, A., & Baldin, I. (2020). Toward a data lifecycle model for NSF large facilities. Proceedings of Practice and Experience in Advanced Research Computing Conference, 2020. Retrieved from https://doi.org/10.1145/3311790.3396636ChristophersonL.ScottE.MandalA.BaldinI.2020Toward a data lifecycle model for NSF large facilitiesProceedings of Practice and Experience in Advanced Research Computing Conference2020Retrieved from https://doi.org/10.1145/3311790.339663610.1145/3311790.3396636Search in Google Scholar
Cleveland, W.S. (2007). Data science: An action plan for expanding the technical areas of the field of statistics. International Statistical Review, 69(1), 21–26.ClevelandW.S.2007Data science: An action plan for expanding the technical areas of the field of statisticsInternational Statistical Review691212610.1111/j.1751-5823.2001.tb00477.xSearch in Google Scholar
Cole., N.S. (1981). Bias in testing. American Psychologist, 36(10), 1067–1077.ColeN.S.1981Bias in testingAmerican Psychologist36101067107710.1037/0003-066X.36.10.1067Search in Google Scholar
Coleman, C.N. (2020). Managing bias when library collections become data. International Journal of Librarianship, 5(1), 8–19.ColemanC.N.2020Managing bias when library collections become dataInternational Journal of Librarianship5181910.23974/ijol.2020.vol5.1.162Search in Google Scholar
Conger, L.D. (1976). Data reference work with machine readable data files in the social sciences. Journal of Academic Librarianship, 2, 60–65.CongerL.D.1976Data reference work with machine readable data files in the social sciencesJournal of Academic Librarianship26065Search in Google Scholar
Coombs, C.H. (1964). A theory of data. New York, NY: John Wiley and Sons.CoombsC.H.1964A theory of dataNew York, NYJohn Wiley and SonsSearch in Google Scholar
Cooke, L. (2018). Privacy, libraries and the era of big data. IFLA Journal, 44(3), 167–169.CookeL.2018Privacy, libraries and the era of big dataIFLA Journal44316716910.1177/0340035218789601Search in Google Scholar
Corbett, M., Deardorff, A., & Kovar-Gough, I. (2014). Emerging data management roles for health librarians in electronic medical records. Journal of the Canadian Health Libraries Association, 35, 55–59.CorbettM.DeardorffA.Kovar-GoughI.2014Emerging data management roles for health librarians in electronic medical recordsJournal of the Canadian Health Libraries Association35555910.5596/c14-022Search in Google Scholar
Cox, A., & Pinfield, S. (2014). Research data management and libraries: Current activities and future priorities. Journal of Librarianship and Information Science, 46(4), 299–316.CoxA.PinfieldS.2014Research data management and libraries: Current activities and future prioritiesJournal of Librarianship and Information Science46429931610.1177/0961000613492542Search in Google Scholar
Cox,, A., & Tam, W. (2018). A critical analysis of lifecycle models of the research process and research data management. Aslib Journal of Information Management, 70(2), 142–157.CoxA.TamW.2018A critical analysis of lifecycle models of the research process and research data managementAslib Journal of Information Management70214215710.1108/AJIM-11-2017-0251Search in Google Scholar
Cuadra, C.A. (1982). A library and information science research agenda for the 1980s: Final Report. Santa Monica, CA: Cuadra Associates.CuadraC.A.1982A library and information science research agenda for the 1980s: Final ReportSanta Monica, CACuadra AssociatesSearch in Google Scholar
Dattalo, P. (2010). Ethical dilemmas in sampling. Journal of Social Work Values and Ethics, 7(1), 12–23.DattaloP.2010Ethical dilemmas in samplingJournal of Social Work Values and Ethics711223Search in Google Scholar
Dhar, V. (2013). Data science and prediction. Communications of the ACM, 56(12), 64–73.DharV.2013Data science and predictionCommunications of the ACM5612647310.1145/2500499Search in Google Scholar
Dolly, J.P., & Tillman, M.H. (1974). An overview of research artifacts supposedly causing data bias. Proceedings of the Annual Meeting of the American Educational Research Association, 1974. Retrieved from https://files.eric.ed.gov/fulltext/ED101009.pdfDollyJ.P.TillmanM.H.1974An overview of research artifacts supposedly causing data biasProceedings of the Annual Meeting of the American Educational Research Association1974Retrieved from https://files.eric.ed.gov/fulltext/ED101009.pdfSearch in Google Scholar
Dube-Rioux, L., & Russo, J.E. (1988). An availability bias in professional judgment. Journal of Behavioral Decision Making, 1(4), 223–237.Dube-RiouxL.RussoJ.E.1988An availability bias in professional judgmentJournal of Behavioral Decision Making1422323710.1002/bdm.3960010403Search in Google Scholar
Eastman, C.M., & Jansen, B.J. (2003). Coverage, relevance, and ranking: The impact of query operators on web search engine results. ACM Transactions on Information Systems, 21(4), 383–411.EastmanC.M.JansenB.J.2003Coverage, relevance, and ranking: The impact of query operators on web search engine resultsACM Transactions on Information Systems21438341110.1145/944012.944015Search in Google Scholar
Egghe, L., & Rousseau, R. (1990). Introduction to informetrics: Quantitative methods in library, documentation, and information science. Amsterdam, NL: Elsevier.EggheL.RousseauR.1990Introduction to informetrics: Quantitative methods in library, documentation, and information scienceAmsterdam, NLElsevierSearch in Google Scholar
Fairfield, J., & Shtein, H. (2014). Big data, big problems: Emerging issues in the ethics of data science in journalism. Journal of Mass Media Ethics, 29(1), 38–51.FairfieldJ.ShteinH.2014Big data, big problems: Emerging issues in the ethics of data science in journalismJournal of Mass Media Ethics291385110.1080/08900523.2014.863126Search in Google Scholar
Floridi, L. (2014). Open data, data protection, and group privacy. Philosophy and Technology, 27, 1–3.FloridiL.2014Open data, data protection, and group privacyPhilosophy and Technology271310.1007/s13347-014-0157-8Search in Google Scholar
Floridi, L. (2021). Ethics, governance, and policies in artificial intelligence. London, UK: Springer.FloridiL.2021Ethics, governance, and policies in artificial intelligenceLondon, UKSpringer10.1007/978-3-030-81907-1Search in Google Scholar
Furner, J. (2007). Dewey deracialized: A critical race-theoretic perspective. Knowledge Organization, 34(3), 144–168.FurnerJ.2007Dewey deracialized: A critical race-theoretic perspectiveKnowledge Organization34314416810.5771/0943-7444-2007-3-144Search in Google Scholar
Furner, J. (2015). Information science is neither. Library Trends, 63(3), 362–377.FurnerJ.2015Information science is neitherLibrary Trends63336237710.1353/lib.2015.0009Search in Google Scholar
Fyffe, R. (2015). The value of information: Normativity, epistemology, and library and information science in Luciano Floridi. Portal: Libraries and the Academy, 15(2), 267–286.FyffeR.2015The value of information: Normativity, epistemology, and library and information science in Luciano FloridiPortal: Libraries and the Academy15226728610.1353/pla.2015.0020Search in Google Scholar
Gao, R., & Shah, C. (2020a). Toward creating a fairer ranking in search enginer results. Information Processing and Management, 57(1), article 102138.GaoR.ShahC.2020aToward creating a fairer ranking in search enginer resultsInformation Processing and Management571article 102138.10.1016/j.ipm.2019.102138Search in Google Scholar
Gao, R., & Shah, C. (2020b). Counteracting bias and increasing fairness in search and recommender systems. ACM Conference on Recommender Systems, 14, 745–747.GaoR.ShahC.2020bCounteracting bias and increasing fairness in search and recommender systemsACM Conference on Recommender Systems1474574710.1145/3383313.3411545Search in Google Scholar
Garfield, E., Sher, I.H., & Torpie, R.J. (1964). The use of citation data in writing the history of science. Philadelphia, PA: Institute for Scientific Information.GarfieldE.SherI.H.TorpieR.J.1964The use of citation data in writing the history of sciencePhiladelphia, PAInstitute for Scientific Information10.21236/AD0466578Search in Google Scholar
Griffiths, J., & King, D.W. (1985). New directions in library and information science education. Rockville, MD: King Research Inc.GriffithsJ.KingD.W.1985New directions in library and information science educationRockville, MDKing Research IncSearch in Google Scholar
Gummesson, E. (2003). All research is interpretive! Journal of Business and Industrial Marketing, 18(6/7), 482–492.GummessonE.2003All research is interpretive!Journal of Business and Industrial Marketing186/748249210.1108/08858620310492365Search in Google Scholar
Hahn, S., Puffer, S., Torgerson, D.J., & Watson, J. (2005). Methodological bias in cluster randomized trials. BMC Medical Research Methodology, 5, article 10.HahnS.PufferS.TorgersonD.J.WatsonJ.2005Methodological bias in cluster randomized trialsBMC Medical Research Methodology5article 10.10.1186/1471-2288-5-1055477415743523Search in Google Scholar
Hajian, S., Bonchi, F., & Castillo, C. (2016). Algorithmic bias: From discrimination discovery to fairness-aware data mining. Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, 22, 2125–2126.HajianS.BonchiF.CastilloC.2016Algorithmic bias: From discrimination discovery to fairness-aware data miningProceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining222125212610.1145/2939672.2945386Search in Google Scholar
Hand, D.J. (2018). Aspects of data ethics in a changing world: Where are we now?. Big data, 6(3), 176–190.HandD.J.2018Aspects of data ethics in a changing world: Where are we now?Big data6317619010.1089/big.2018.0083615445130283727Search in Google Scholar
Harmeyer, D. (1995). Potential collection development bias: Some evidence on a controversial topic in California. College and Research Libraries, 56, 101–111.HarmeyerD.1995Potential collection development bias: Some evidence on a controversial topic in CaliforniaCollege and Research Libraries5610111110.5860/crl_56_02_101Search in Google Scholar
Hartley, R.V. (1928). Transmission of information. Bell System Technical Journal, July 1928, 535.HartleyR.V.1928Transmission of informationBell System Technical JournalJuly192853510.1002/j.1538-7305.1928.tb01236.xSearch in Google Scholar
Haussler, D. (1988). Quantifying inductive bias: AI learning algorithms and Valiant's learning framework. Artificial Intelligence, 36(2), 177–221.HausslerD.1988Quantifying inductive bias: AI learning algorithms and Valiant's learning frameworkArtificial Intelligence36217722110.1016/0004-3702(88)90002-1Search in Google Scholar
Hoffmann, A.L. (2019). Where fairness fails: On data, algorithms, and the limits of antidiscrimination discourse. Information, Communication, and Society, 22(7), 900–915.HoffmannA.L.2019Where fairness fails: On data, algorithms, and the limits of antidiscrimination discourseInformation, Communication, and Society22790091510.1080/1369118X.2019.1573912Search in Google Scholar
Hoffmann, A.L., Wolf, C.T., Roberts, S.T., & Wood, S. (2018). Beyond fairness, accountability, and transparency in the ethics of algorithms: Contributions and perspectives from LIS. Proceedings of the ASIST Annual Meeting, 81, 695–696.HoffmannA.L.WolfC.T.RobertsS.T.WoodS.2018Beyond fairness, accountability, and transparency in the ethics of algorithms: Contributions and perspectives from LISProceedings of the ASIST Annual Meeting8169569610.1002/pra2.2018.14505501084Search in Google Scholar
Horst, P. (1965). Factor analysis of data matrices. New York, NY: Holt, Rinehart, and Winston.HorstP.1965Factor analysis of data matricesNew York, NYHolt, Rinehart, and WinstonSearch in Google Scholar
Jackson, B. (2018). The changing research data landscape and the experiences of ethics review board chairs. Journal of Academic Librarianship, 44(5), 603–612.JacksonB.2018The changing research data landscape and the experiences of ethics review board chairsJournal of Academic Librarianship44560361210.1016/j.acalib.2018.07.001Search in Google Scholar
Janeway, R.C. (1944). Technique of measuring student use of the university library through circulation records (doctoral dissertation). Urbana, IL: University of Illinois.JanewayR.C.1944Technique of measuring student use of the university library through circulation records(doctoral dissertation).Urbana, ILUniversity of IllinoisSearch in Google Scholar
Jansen, B.J., & Schuster, S. (2011). Bidding on the buying funnel for sponsored search and keyword advertising. Journal of Electronic Commerce Research, 12(1), 1–18.JansenB.J.SchusterS.2011Bidding on the buying funnel for sponsored search and keyword advertisingJournal of Electronic Commerce Research121118Search in Google Scholar
Järvinen, T.L.N., Sihvonen, R., Bhandari, M., Sprague, S., Malmivaara, A., Paavola, M., Schünemann, H.J., & Guyatt, G.H. (2014). Blinded interpretation of study results can feasibly and effectively diminish interpretation bias. Journal of Clinical Epidemiology, 67(7), 769–772.JärvinenT.L.N.SihvonenR.BhandariM.SpragueS.MalmivaaraA.PaavolaM.SchünemannH.J.GuyattG.H.2014Blinded interpretation of study results can feasibly and effectively diminish interpretation biasJournal of Clinical Epidemiology67776977210.1016/j.jclinepi.2013.11.01124560088Search in Google Scholar
Javed, H., Bagh, T., & Razzaq, S. (2017). Herding effects, over confidence, availability bias and representativeness as behavioral determinants of perceived investment performance: An empirical evidence from Pakistan Stock Exchange. Journal of Global Economics, 6(1), 1–13.JavedH.BaghT.RazzaqS.2017Herding effects, over confidence, availability bias and representativeness as behavioral determinants of perceived investment performance: An empirical evidence from Pakistan Stock ExchangeJournal of Global Economics6111310.4172/2375-389.1000275Search in Google Scholar
Jones, K.M.L. (2019). “Just because you can doesn’t mean you should”: Practitioner perceptions of learning analytics ethics. Portal: Libraries and the Academy, 19(3), 407–428.JonesK.M.L.2019“Just because you can doesn’t mean you should”: Practitioner perceptions of learning analytics ethicsPortal: Libraries and the Academy19340742810.1353/pla.2019.0025Search in Google Scholar
Jones, K.M.L., Asher, A., Goben, A., Perry, M.R., Salo, D., Briney, K.A., & Robertshaw, M.B. (2020). “We’re being tracked at all times”: Student perspectives of their privacy in relation to learning analytics in higher education. Journal of the Association for Information Science and Technology, 71(9), 1044–1059.JonesK.M.L.AsherA.GobenA.PerryM.R.SaloD.BrineyK.A.RobertshawM.B.2020“We’re being tracked at all times”: Student perspectives of their privacy in relation to learning analytics in higher educationJournal of the Association for Information Science and Technology7191044105910.1002/asi.24358Search in Google Scholar
Jones, K.M.L., & Salo, D. (2018). Learning analytics and the academic library: Professional ethics commitments at a crossroads. College and Research Libraries, 79(3), 304–323.JonesK.M.L.SaloD.2018Learning analytics and the academic library: Professional ethics commitments at a crossroadsCollege and Research Libraries79330432310.5860/crl.79.3.304Search in Google Scholar
Kerr, K.A., Norris, T., & Stockdale, R. (2008). The strategic management of data quality in healthcare. Health Informatics Journal, 14(4), 259–266.KerrK.A.NorrisT.StockdaleR.2008The strategic management of data quality in healthcareHealth Informatics Journal14425926610.1177/146045820809655519008276Search in Google Scholar
Kilgour, F.G. (1969). The economic goal of library automation. College & Research Libraries, 30(4), 307–311.KilgourF.G.1969The economic goal of library automationCollege & Research Libraries30430731110.5860/crl_30_04_307Search in Google Scholar
Kinksman, B. (1957). Proper and improper use of statistics in geophysics. Tellus, 9(3), 408–418.KinksmanB.1957Proper and improper use of statistics in geophysicsTellus9340841810.3402/tellusa.v9i3.9099Search in Google Scholar
Kiviet, J.F. (1995). On bias, inconsistency, and efficacy of various estimators in dynamic panel data models. Journal of Econometrics, 68(1), 53–78.KivietJ.F.1995On bias, inconsistency, and efficacy of various estimators in dynamic panel data modelsJournal of Econometrics681537810.1016/0304-4076(94)01643-ESearch in Google Scholar
Klein, L.R. (1953). A textbook of econometrics. White Plains, NY: Row, Peterson, and Company.KleinL.R.1953A textbook of econometricsWhite Plains, NYRow, Peterson, and CompanySearch in Google Scholar
Koene, A. (2017) Algorithmic bias: Addressing growing concerns. IEEE Technology and Society Magazine, June 2017, 31–32.KoeneA.2017Algorithmic bias: Addressing growing concernsIEEE Technology and Society MagazineJune 2017313210.1109/MTS.2017.2697080Search in Google Scholar
Koltay, T. (2017). Data literacy for researchers and data librarians. Journal of Librarianship and Information Science, 49(1), 3–14. https://doi.org/10.1177/0961000615616450KoltayT.2017Data literacy for researchers and data librariansJournal of Librarianship and Information Science491314https://doi.org/10.1177/096100061561645010.1177/0961000615616450Search in Google Scholar
Kostrewski, B.J., & Oppenheim, C. (1979). Ethics in information science. Journal of Information Science, 1(5), 277–283.KostrewskiB.J.OppenheimC.1979Ethics in information scienceJournal of Information Science1527728310.1177/016555157900100505Search in Google Scholar
Kuiler, E.W., & McNeely, C.L. (2020). Knowledge formulation in the health domain: A semiotics-powered approach to data analytics and democratization. In Batarseh, F.A., & Yang, R., Data democracy: At the nexus of artificial intelligence, software development, and knowledge engineering. Cambridge, MA: Academic Press.KuilerE.W.McNeelyC.L.2020Knowledge formulation in the health domain: A semiotics-powered approach to data analytics and democratizationInBatarsehF.A.YangR.Data democracy: At the nexus of artificial intelligence, software development, and knowledge engineeringCambridge, MAAcademic PressSearch in Google Scholar
Laskowski, C. (2021). Structuring better services for unstructured data: Academic libraries are key to an ethical research data future with big data. Journal of Academic Librarianship, 47(4), 102335.LaskowskiC.2021Structuring better services for unstructured data: Academic libraries are key to an ethical research data future with big dataJournal of Academic Librarianship47410233510.1016/j.acalib.2021.102335Search in Google Scholar
Liang, F., Yu, W., An, D., Yang, Q., Fu, X., & Zhao, W. (2018). A survey on big data market: Pricing, trading, and protection. IEEE Access, 6, 15132–15154.LiangF.YuW.AnD.YangQ.FuX.ZhaoW.2018A survey on big data market: Pricing, trading, and protectionIEEE Access6151321515410.1109/ACCESS.2018.2806881Search in Google Scholar
Lund, B.D. (2022). The Art of (Data) Storytelling: Hip Hop Innovation and Bringing a Social Justice Mindset to Data Science and Visualization. The International Journal of Information, Diversity, & Inclusion (IJIDI), 6(1/2), 31–41.LundB.D.2022The Art of (Data) Storytelling: Hip Hop Innovation and Bringing a Social Justice Mindset to Data Science and VisualizationThe International Journal of Information, Diversity, & Inclusion (IJIDI)61/2314110.33137/ijidi.v6i1.37027Search in Google Scholar
Lund, B.D., Wang, T., Shamsi, A., Abdullahi, J., Awojobi, E.A., Borgohain, D.J., …, & Yusuf, A.O. (2021). Barriers to scholarly publishing among library and information science researchers: International perspectives. Information Development. https://doi.org/10.1177/02666669211052522LundB.D.WangT.ShamsiA.AbdullahiJ.AwojobiE.A.BorgohainD.J.YusufA.O.2021Barriers to scholarly publishing among library and information science researchers: International perspectivesInformation Developmenthttps://doi.org/10.1177/0266666921105252210.1177/02666669211052522Search in Google Scholar
Lynn, P., & Jowell, R. (1996). How might opinion polls be improved?: The case for probability sampling. Journal of the Royal Statistical Society: Series A, 159(1), 21–28.LynnP.JowellR.1996How might opinion polls be improved?: The case for probability samplingJournal of the Royal Statistical Society: Series A1591212810.2307/2983465Search in Google Scholar
Ma, J., & Lund, B.D. (2020). The evolution of LIS research topics and methods from 2006 to 2018: A content analysis. Proceedings of the Association for Information Science and Technology, 57(1), e241.MaJ.LundB.D.2020The evolution of LIS research topics and methods from 2006 to 2018: A content analysisProceedings of the Association for Information Science and Technology571e24110.1002/pra2.241Search in Google Scholar
Ma, J., & Lund, B.D. (2021). The evolution and shift of research topics and methods in library and information science. Journal of the Association for Information Science and Technology, 72(8), 1059–1074.MaJ.LundB.D.2021The evolution and shift of research topics and methods in library and information scienceJournal of the Association for Information Science and Technology7281059107410.1002/asi.24474Search in Google Scholar
Mamede, S., van Gog, T., van den Berge, K., Rikers, R.M.J., van Saase, J.L., van Guldener, C., & Schmidt, H.G. (2010). Effect of availability bias and reflective reasoning on diagnostic accuracy among internal medicine residents. Journal of the American Medical Association, 304(11), 1198–1203.MamedeS.van GogT.van den BergeK.RikersR.M.J.van SaaseJ.L.van GuldenerC.SchmidtH.G.2010Effect of availability bias and reflective reasoning on diagnostic accuracy among internal medicine residentsJournal of the American Medical Association304111198120310.1001/jama.2010.127620841533Search in Google Scholar
Marchionini, G. (2016). Information science roles in the emerging field of data science. Journal of Data and Information Science, 1(2), 1–6.MarchioniniG.2016Information science roles in the emerging field of data scienceJournal of Data and Information Science121610.20309/jdis.201609Search in Google Scholar
Mark, M.M., Eyssell, K.M., & Campbell, B. (1999). The ethics of data collection and analysis. New Directions for Evaluation, 82, 47–56.MarkM.M.EyssellK.M.CampbellB.1999The ethics of data collection and analysisNew Directions for Evaluation82475610.1002/ev.1136Search in Google Scholar
Martinez-Mesa, J., Gonzalez-Chica, D.A., Duquia, R.P., Bonamigo, R.R., & Bastos, J.L. (2016). Sampling: How to select participants in my research study? Anais Brasileiros de Dermatologia, 91(3), 326–330.Martinez-MesaJ.Gonzalez-ChicaD.A.DuquiaR.P.BonamigoR.R.BastosJ.L.2016Sampling: How to select participants in my research study?Anais Brasileiros de Dermatologia91332633010.1590/abd1806-4841.20165254493827727438200Search in Google Scholar
Millsap, R.E., & Everson, H.T. (1993). Methodology review: Statistical approaches for assessing measurement bias. Applied Psychological Measurement, 17(4), 297–334.MillsapR.E.EversonH.T.1993Methodology review: Statistical approaches for assessing measurement biasApplied Psychological Measurement17429733410.1177/014662169301700401Search in Google Scholar
Mittelstadt, B.D., Allo, P., Taddeo, M., Wachter, S., & Floridi, L. (2016). The ethics of algorithms: Mapping the debate. Big Data and Society, July–December 2016, 1–21.MittelstadtB.D.AlloP.TaddeoM.WachterS.FloridiL.2016The ethics of algorithms: Mapping the debateBig Data and SocietyJuly–December201612110.1177/2053951716679679Search in Google Scholar
Mittelstadt, B.D., & Floridi, L. (2015). The ethics of big data: Current and foreseeable issues in biomedical contexts. Science and Engineering Ethics, 22, 303–341.MittelstadtB.D.FloridiL.2015The ethics of big data: Current and foreseeable issues in biomedical contextsScience and Engineering Ethics2230334110.1007/978-3-319-33525-4_19Search in Google Scholar
Nicholson, N.N., & Bartlett, E. (1962). Who uses university libraries? College and Research Libraries, 23(3), 217–259.NicholsonN.N.BartlettE.1962Who uses university libraries?College and Research Libraries23321725910.5860/crl_23_03_217Search in Google Scholar
Nissenbaum, H. (2004). Privacy as conxtual integrity. Washington Law Review, 79, 119–158.NissenbaumH.2004Privacy as conxtual integrityWashington Law Review79119158Search in Google Scholar
Noble, S.U. (2018). Algorithms of oppression: How search engines reinforce racism. New York, NY: New York University Press.NobleS.U.2018Algorithms of oppression: How search engines reinforce racismNew York, NYNew York University Press10.2307/j.ctt1pwt9w5Search in Google Scholar
Ntoutsi, E., Fafalios, P., Gadiraju, U., Iosifidis, V., Nejdl, W., Vidal, M., …, & Staab, S. (2020). Bias in data-driven artificial intelligence systems: An introductory survey. WIREs Data Mining and Knowledge Discovery, 10, paper e1356. https://doi.org/10.1002/widm.1356NtoutsiE.FafaliosP.GadirajuU.IosifidisV.NejdlW.VidalM.StaabS.2020Bias in data-driven artificial intelligence systems: An introductory surveyWIREs Data Mining and Knowledge Discovery10paper e1356. https://doi.org/10.1002/widm.135610.1002/widm.1356Search in Google Scholar
Ortiz-Repiso, V., Greenberg, J., & Calzada-Prado, J. (2018). A cross-institutional analysis of data-related curricula in information science programs. Journal of Information Science, 44(6), 768–784.Ortiz-RepisoV.GreenbergJ.Calzada-PradoJ.2018A cross-institutional analysis of data-related curricula in information science programsJournal of Information Science44676878410.1177/0165551517748149Search in Google Scholar
Osborne, N.K.P., Woods, S., Kieser, J., & Zajac, R. (2014). Does contextual information bias bitemark comparisons? Science and Justice, 54(4), 267–273.OsborneN.K.P.WoodsS.KieserJ.ZajacR.2014Does contextual information bias bitemark comparisons?Science and Justice54426727310.1016/j.scijus.2013.12.00525002044Search in Google Scholar
Paré, G., Trudel, M.C., Jaana, M., & Kitsiou, S. (2015). Synthesizing information systems knowledge: A typology of literature reviews. Information and Management, 52(2), 183–199.ParéG.TrudelM.C.JaanaM.KitsiouS.2015Synthesizing information systems knowledge: A typology of literature reviewsInformation and Management52218319910.1016/j.im.2014.08.008Search in Google Scholar
Pather, S., & Gomez, R. (2010). Public access ICT: A south-south comparative analysis of libraries, telecentres and cybercafes in South Africa and Brazil. AMCIS 2010 Proceedings, article 526. https://aisel.aisnet.org/amcis2010/526PatherS.GomezR.2010Public access ICT: A south-south comparative analysis of libraries, telecentres and cybercafes in South Africa and BrazilAMCIS 2010 Proceedingsarticle 526. https://aisel.aisnet.org/amcis2010/526Search in Google Scholar
Pederson, E.R., Neighbors, C., Tidwell, J., & Lostutter, T.W. (2011). Do undergraduate student research participants read psychological consent forms? Ethics and Behavior, 21(4), 332–350.PedersonE.R.NeighborsC.TidwellJ.LostutterT.W.2011Do undergraduate student research participants read psychological consent forms?Ethics and Behavior21433235010.1080/10508422.2011.585601358336923459667Search in Google Scholar
Pinfield, S., Cox, A.M., & Smith, J. (2014). Research data management and libraries: Relationships, activities, drivers and influencers. PLoS One, 9(12), e114734.PinfieldS.CoxA.M.SmithJ.2014Research data management and libraries: Relationships, activities, drivers and influencersPLoS One912e11473410.1371/journal.pone.0114734425946925485539Search in Google Scholar
Poole, A.H. (2021). Leading the way: A new model for data science education. Proceedings of the Association for Information Science and Technology, 58(1), 525–531.PooleA.H.2021Leading the way: A new model for data science educationProceedings of the Association for Information Science and Technology58152553110.1002/pra2.491Search in Google Scholar
Pope, A. (1975). Bradford's law and the periodical literature of information science. Journal of the American Society for Information Science, 26, 207–213.PopeA.1975Bradford's law and the periodical literature of information scienceJournal of the American Society for Information Science2620721310.1002/asi.4630260403Search in Google Scholar
Prado, J.C., & Marzal, M.A. (2013). Incorporting data literacy into information literacy programs: Core competencies and contents. Libri, 63(2), 123–134. https://doi.org/10.1515/libri-2013-0010PradoJ.C.MarzalM.A.2013Incorporting data literacy into information literacy programs: Core competencies and contentsLibri632123134https://doi.org/10.1515/libri-2013-001010.1515/libri-2013-0010Search in Google Scholar
Price, W., & Nicholson, I. (2019). Medical AI and contextual bias. Harvard Journal of Law and Technology, 33, 65–116.PriceW.NicholsonI.2019Medical AI and contextual biasHarvard Journal of Law and Technology3365116Search in Google Scholar
Prindle, S., & Loos, A. (2017). Information ethics and academic libraires: Data privacy in the era of big data. Journal of Information Ethics, 26(2), 22–33.PrindleS.LoosA.2017Information ethics and academic libraires: Data privacy in the era of big dataJournal of Information Ethics2622233Search in Google Scholar
Provost, F., & Fawcett, T. (2013). Data science and its relationship to big data and data-driven decision making. Big Data, 1(1), 51–59.ProvostF.FawcettT.2013Data science and its relationship to big data and data-driven decision makingBig Data11515910.1089/big.2013.150827447038Search in Google Scholar
Ranganathan, S.R. (1931). The five laws of library science. London, UK: Edward Goldston, LTD.RanganathanS.R.1931The five laws of library scienceLondon, UKEdward Goldston, LTDSearch in Google Scholar
Ray, J.M. (ed.) (2014). Research data management: Practical strategies for information professionals. West Lafayette, IN: Purdue University.RayJ.M.(ed.)2014Research data management: Practical strategies for information professionalsWest Lafayette, INPurdue UniversitySearch in Google Scholar
Read, M. (2008). Libraries and repositories. New Reivew of Academic Librarianship, 14(1/2), 71–78.ReadM.2008Libraries and repositoriesNew Reivew of Academic Librarianship141/2717810.1080/13614530802519139Search in Google Scholar
Richards, N.M., & King, J.H. (2014). Big data ethics. Wake Forest Law Review, 49, 393–432.RichardsN.M.KingJ.H.2014Big data ethicsWake Forest Law Review49393432Search in Google Scholar
Roberts, S.T. (2016). Commerical content moderation: Digital laborers’ dirty work. In Noble, S.U. and Tynes, B. (eds.), The intersectional Internet. New York, NY: Peter Lang.RobertsS.T.2016Commerical content moderation: Digital laborers’ dirty workInNobleS.U.TynesB.(eds.),The intersectional InternetNew York, NYPeter LangSearch in Google Scholar
Roeschley, A., & Khader, M. (2020). Defining data ethics in library and information science. iConference Proceedings, 2020. Retrieved from http://hdl.handle.net/2142/106536RoeschleyA.KhaderM.2020Defining data ethics in library and information scienceiConference Proceedings2020Retrieved from http://hdl.handle.net/2142/106536Search in Google Scholar
Rolfe, H. (2017). Inequality, social mobility and the new economy: Introduction. National Institute Economic Review, 240(1), R1–R4.RolfeH.2017Inequality, social mobility and the new economy: IntroductionNational Institute Economic Review2401R1R410.1177/002795011724000109Search in Google Scholar
Rowley, J. (2007). The wisdom hierarchy: Representation of the DIKW hierarchy. Journal of Information Science, 33(2), 163–180.RowleyJ.2007The wisdom hierarchy: Representation of the DIKW hierarchyJournal of Information Science33216318010.1177/0165551506070706Search in Google Scholar
Rubel, A. (2014). Libraries, electronic resources, and privacy: The case for positive intellectual freedom. The Library Quarterly, 84(2), 183–208.RubelA.2014Libraries, electronic resources, and privacy: The case for positive intellectual freedomThe Library Quarterly84218320810.1086/675331Search in Google Scholar
Rubel, A., & Jones, K.M.L. (2016). Student privacy in learning analytics: An information ethics perspective. The Information Society, 32(2), 143–159.RubelA.JonesK.M.L.2016Student privacy in learning analytics: An information ethics perspectiveThe Information Society32214315910.1080/01972243.2016.1130502Search in Google Scholar
Rubin, R. (2017). Foundations of library and information science. Chicago, IL: American Library Association.RubinR.2017Foundations of library and information scienceChicago, ILAmerican Library AssociationSearch in Google Scholar
Rüegg, J., Gries, C., Bond-Lamberty, B., Bowen, G.J., Felzer, B.S., McIntyre, N.E., ... & Weathers, K.C. (2014). Completing the data life cycle: using information management in macrosystems ecology research. Frontiers in Ecology and the Environment, 12(1), 24–30.RüeggJ.GriesC.Bond-LambertyB.BowenG.J.FelzerB.S.McIntyreN.E.WeathersK.C.2014Completing the data life cycle: using information management in macrosystems ecology researchFrontiers in Ecology and the Environment121243010.1890/120375Search in Google Scholar
Sanfilippo, M.R., Shvartzshnaider, Y., Reyes, I., Nissenbaum, H., & Egelman, S. (2020). Disaster privacy/privacy disaster. Journal of the Association for Information Science and Technology, 71(9), 1002–1014.SanfilippoM.R.ShvartzshnaiderY.ReyesI.NissenbaumH.EgelmanS.2020Disaster privacy/privacy disasterJournal of the Association for Information Science and Technology7191002101410.1002/asi.24353Search in Google Scholar
Saracevic, T. (1999). Information Science. Journal of the American Society for Information Science, 50(12), 1051–1063SaracevicT.1999Information ScienceJournal of the American Society for Information Science50121051106310.1002/(SICI)1097-4571(1999)50:12<1051::AID-ASI2>3.0.CO;2-ZSearch in Google Scholar
Schradie, J. (2020). The great equalizer reproduces inequality: How the digital divide is a class power divide. In Eidlin, B., & McCarthy, M.A. (ed.), Rethinking class and social difference (vol. 27). Bingley, UK: Emerald Publishing Limited.SchradieJ.2020The great equalizer reproduces inequality: How the digital divide is a class power divideInEidlinB.McCarthyM.A.(ed.),Rethinking class and social difference27Bingley, UKEmerald Publishing Limited10.1108/S0198-871920200000037005Search in Google Scholar
Selwyn, N. (2020). Re-imagining learning analytics... a case for starting again? Internet and Higher Education, 46, article 100745.SelwynN.2020Re-imagining learning analytics... a case for starting again?Internet and Higher Education46article 100745.10.1016/j.iheduc.2020.100745Search in Google Scholar
Semeler, A.R., & Pinto, A.L. (2020). Librarianship in the age of data science: Data librarianship venn diagram. International Conference on Data and Information in Online Environments, 2020, 118–130. https://doi.org/10.1007/978-3-030-50072-6_10SemelerA.R.PintoA.L.2020Librarianship in the age of data science: Data librarianship venn diagramInternational Conference on Data and Information in Online Environments2020118130https://doi.org/10.1007/978-3-030-50072-6_1010.1007/978-3-030-50072-6_10Search in Google Scholar
Semeler, A.R., Pinto, A.L., & Rozados, H.B.F. (2017). Data science in data librarianship: Core competencies of a data librarian. Journal of Librarianship and Information Science, 51(3), 771–780.SemelerA.R.PintoA.L.RozadosH.B.F.2017Data science in data librarianship: Core competencies of a data librarianJournal of Librarianship and Information Science51377178010.1177/0961000617742465Search in Google Scholar
Severson, H.H., & Ary, D.V. (1983). Sampling bias due to consent procedures with adolescents. Addictive Behaviors, 8(4), 433–437.SeversonH.H.AryD.V.1983Sampling bias due to consent procedures with adolescentsAddictive Behaviors8443343710.1016/0306-4603(83)90046-1Search in Google Scholar
Shachaf, P. (2005). A global perspective on library association codes of ethics. Library and Information Science Research, 27(4), 513–533.ShachafP.2005A global perspective on library association codes of ethicsLibrary and Information Science Research27451353310.1016/j.lisr.2005.08.008Search in Google Scholar
Shankar, K., Jeng, W., Thomer, A., Weber, N., & Yoon, A. (2020). Data curation as collective action during COVID-19. Journal of the Association for Information Science and Technology, 72(3), 280–284.ShankarK.JengW.ThomerA.WeberN.YoonA.2020Data curation as collective action during COVID-19Journal of the Association for Information Science and Technology72328028410.1002/asi.24406Search in Google Scholar
Shannon, C.E. (1948). A mathematical theory of communication. Bell System Technical Journal, 27(3), 379–423.ShannonC.E.1948A mathematical theory of communicationBell System Technical Journal27337942310.1002/j.1538-7305.1948.tb01338.xSearch in Google Scholar
Shen, Y. (2015). Strategic planning for a data-driven, shared-access research enterprise: Virginia Tech research data assessment and landscape study. Proceedings of the Association for Information Science and Technology, 52, 1–4.ShenY.2015Strategic planning for a data-driven, shared-access research enterprise: Virginia Tech research data assessment and landscape studyProceedings of the Association for Information Science and Technology521410.1002/pra2.2015.145052010065Search in Google Scholar
Shilton, K. (2012). Participatory personal data: An emerging research challenge for the information sciences. Journal of the American Society for Information Science and Technology, 63(10), 1905–1915.ShiltonK.2012Participatory personal data: An emerging research challenge for the information sciencesJournal of the American Society for Information Science and Technology63101905191510.1002/asi.22655Search in Google Scholar
Shiri, A. (2016). Exploring information ethics: A metadata analytics approach. Journal of Information Ethics, 25(1), 17–37.ShiriA.2016Exploring information ethics: A metadata analytics approachJournal of Information Ethics2511737Search in Google Scholar
Si, L., Zhuang, X., Xing, W., & Guo, W. (2013). The cultivation of scientific data specialists: Development of LIS education oriented to e-science service requirements. Library Hi Tech, 31(4), 700–724.SiL.ZhuangX.XingW.GuoW.2013The cultivation of scientific data specialists: Development of LIS education oriented to e-science service requirementsLibrary Hi Tech31470072410.1108/LHT-06-2013-0070Search in Google Scholar
Siguenza-Guzman, L., Saquicela, V., Avila-Ordonez, E., Vandewalle, J., & Cattrysse, D. (2015). Literature review of data mining applications in academic libraries. The Journal of Academic Librarianship, 41(4), 499–510.Siguenza-GuzmanL.SaquicelaV.Avila-OrdonezE.VandewalleJ.CattrysseD.2015Literature review of data mining applications in academic librariesThe Journal of Academic Librarianship41449951010.1016/j.acalib.2015.06.007Search in Google Scholar
Šimundić, A. (2013). Bias in research. Biochemia Medica, 23(1), 12–15.ŠimundićA.2013Bias in researchBiochemia Medica231121510.11613/BM.2013.003Search in Google Scholar
Smith, J., & Noble, H. (2014). Bias in research. Evidence-based Nursing, 17(4), 100–101.SmithJ.NobleH.2014Bias in researchEvidence-based Nursing17410010110.1136/eb-2014-10194625097234Search in Google Scholar
Smith, L.C. (1981). Citation analysis. Library Trends, 30(1), 83–106.SmithL.C.1981Citation analysisLibrary Trends30183106Search in Google Scholar
Song, I., & Zhu, Y. (2017). Big data and data science: Opportunities and challenges of iSchools. Journal of Data and Information Science, 2(3), 1–18.SongI.ZhuY.2017Big data and data science: Opportunities and challenges of iSchoolsJournal of Data and Information Science2311810.1515/jdis-2017-0011Search in Google Scholar
Spector, W.S. (1956). Handbook of biological data. Washington, D.C.: United States’ Department of Energy.SpectorW.S.1956Handbook of biological dataWashington, D.C.United States’ Department of EnergySearch in Google Scholar
Spink, A., Wolfram, D., Jansen, B.J., & Saracevic, T. (2001). Searching the web: The public and their queries. Journal of the American Society for Information Science and Technology, 52(3), 226–234.SpinkA.WolframD.JansenB.J.SaracevicT.2001Searching the web: The public and their queriesJournal of the American Society for Information Science and Technology52322623410.1002/1097-4571(2000)9999:9999<::AID-ASI1591>3.0.CO;2-RSearch in Google Scholar
Špiranec, S., Kos, D., & George, M. (2019). Searching for critical dimensions in data literacy. Information Research, 24(4), paper colis 1922. https://InformationR.net/ir/24-4/colis/colis1922.htmlŠpiranecS.KosD.GeorgeM.2019Searching for critical dimensions in data literacyInformation Research244paper colis 1922. https://InformationR.net/ir/24-4/colis/colis1922.htmlSearch in Google Scholar
Stobierski, T. (2021). 8 steps in the data life cycle. Retrieved from https://online.hbs.edu/blog/post/data-life-cycleStobierskiT.20218 steps in the data life cycleRetrieved from https://online.hbs.edu/blog/post/data-life-cycleSearch in Google Scholar
Taylor, R.S. (1966). Professional aspects of information science and technology. In Cuadra, C. (ed), Annual Review of Information Science and Technology (volume 1). New York, NY: John Wiley and Sons.TaylorR.S.1966Professional aspects of information science and technologyInCuadraC.(ed),Annual Review of Information Science and Technology1New York, NYJohn Wiley and SonsSearch in Google Scholar
Tenopir, C., Hughes, D., Allard, S., Frame, M., Birch, B., Sandusky, R.J., Langseth, M.L., & Lundeen, A. (2015). Research data services in academic libraries: Data intensive roles for the future? Journal of eScience Librarianship, 4(2). https://doi.org/10.7191/jeslib.2015.1085TenopirC.HughesD.AllardS.FrameM.BirchB.SanduskyR.J.LangsethM.L.LundeenA.2015Research data services in academic libraries: Data intensive roles for the future?Journal of eScience Librarianship42https://doi.org/10.7191/jeslib.2015.108510.7191/jeslib.2015.1085Search in Google Scholar
Tenopir, C., Rice, N.M., Allard, S., Baird, L., Borycz, J., Christian, L., Grant, B., Olendorf, R., & Sandusky, R.J. (2020). Data sharing, management, use, and reuse: Practices and perceptions of scientists worldwide. PloS One, 15(3), article e0229003.TenopirC.RiceN.M.AllardS.BairdL.BoryczJ.ChristianL.GrantB.OlendorfR.SanduskyR.J.2020Data sharing, management, use, and reuse: Practices and perceptions of scientists worldwidePloS One153article e0229003.10.1371/journal.pone.0229003706582332160189Search in Google Scholar
Tenopir, C., Sandusky, R.J., Allard, S., & Birch, B. (2014). Research data management services in academic research libraries and perceptions of librarians. Library and Information Science Research, 36(2), 84–90.TenopirC.SanduskyR.J.AllardS.BirchB.2014Research data management services in academic research libraries and perceptions of librariansLibrary and Information Science Research362849010.1016/j.lisr.2013.11.003Search in Google Scholar
Tenopir, C., Talja, S., Horstmann, W., Late, E., Hughes, D., Pollock, D., Schmidt, B., Baird, L., Sandusky, R.J., & Allard, S. (2017). Research data services in European academic research libraries. LIBER Quarterly, 27(1), 23–44.TenopirC.TaljaS.HorstmannW.LateE.HughesD.PollockD.SchmidtB.BairdL.SanduskyR.J.AllardS.2017Research data services in European academic research librariesLIBER Quarterly271234410.18352/lq.10180Search in Google Scholar
Thelwall, M. (2004). Link analysis: An information science approach. Amsterdam, NL: Elsevier.ThelwallM.2004Link analysis: An information science approachAmsterdam, NLElsevier10.1108/S1876-0562(2004)04Search in Google Scholar
Tremblay, M.C., Deckard, G.J., & Klein, R. (2016). Health informatics and analytics: Building a program to integrate business analytics across clinical and administrative disciplines. Journal of the American Medical Informatics Association, 23(4), 824–828.TremblayM.C.DeckardG.J.KleinR.2016Health informatics and analytics: Building a program to integrate business analytics across clinical and administrative disciplinesJournal of the American Medical Informatics Association23482482810.1093/jamia/ocw055939751527274022Search in Google Scholar
Trepanier, C., Shiri, A., & Samek, T. (2019). An examination of IFLA and Data Science Association ethical codes. IFLA Journal, 45(4), 289–301.TrepanierC.ShiriA.SamekT.2019An examination of IFLA and Data Science Association ethical codesIFLA Journal45428930110.1177/0340035219849614Search in Google Scholar
Tukey, J.W. (1962). The future of data analysis. The Annals of Mathematical Statistics, 33(1), 1–67.TukeyJ.W.1962The future of data analysisThe Annals of Mathematical Statistics33116710.1007/978-1-4612-4380-9_31Search in Google Scholar
Turing, A.M. (1936). On computable numbers, with an application to the Entscheidungsproblem. Journal of Math, 58, 230–265.TuringA.M.1936On computable numbers, with an application to the EntscheidungsproblemJournal of Math5823026510.1016/B978-0-08-009217-1.50024-4Search in Google Scholar
van der Aalst, W.M.P., Bichler, M., & Heinzl, A. (2017). Responsible data science. Business and Information Systems Engineering, 59, 311–313.van der AalstW.M.P.BichlerM.HeinzlA.2017Responsible data scienceBusiness and Information Systems Engineering5931131310.1007/s12599-017-0487-zSearch in Google Scholar
Virkus, S., & Garoufallou, E. (2019). Data science from a library and information science perspective. Data Technologies and Applications, 53(4), 422–441.VirkusS.GaroufallouE.2019Data science from a library and information science perspectiveData Technologies and Applications53442244110.1108/DTA-05-2019-0076Search in Google Scholar
Wallace, D.P. (1985). The use of statistical methods in library and information science. Journal of the Association for Information Science and Technology, 36(6), 402–411.WallaceD.P.1985The use of statistical methods in library and information scienceJournal of the Association for Information Science and Technology36640241110.1002/asi.4630360610Search in Google Scholar
Waller, M.A., & Fawcett, S.E. (2013). Data science, predictive analytics, and big data: A revolution that will transform supply chain design and management. Journal of Business Logistics, 34(2), 77–84.WallerM.A.FawcettS.E.2013Data science, predictive analytics, and big data: A revolution that will transform supply chain design and managementJournal of Business Logistics342778410.1111/jbl.12010Search in Google Scholar
Walter, S. (2008). The library as ecosystem. Library Journal, 133(16), 28–32.WalterS.2008The library as ecosystemLibrary Journal133162832Search in Google Scholar
Wang, L. (2018). Twinning data science with information science in schools of library and information science. Journal of Documentation, 74(6), 1243–1257.WangL.2018Twinning data science with information science in schools of library and information scienceJournal of Documentation7461243125710.1108/JD-02-2018-0036Search in Google Scholar
Wang, Y., & Lin, C. (2019). A survey of data science programs and courses in the iSchools. Proceedings of the ASIST Annual Meeting, 56, 801–802.WangY.LinC.2019A survey of data science programs and courses in the iSchoolsProceedings of the ASIST Annual Meeting5680180210.1002/pra2.184Search in Google Scholar
Washington Durr, A.K. (2020). A text analysis of data science career opportunities and US iSchool curriculum. Journal of Education for Library and Information Science, 61(2), 270–293.Washington DurrA.K.2020A text analysis of data science career opportunities and US iSchool curriculumJournal of Education for Library and Information Science61227029310.3138/jelis.2018-0067Search in Google Scholar
Westgard, J.O., & Hunt, M.R. (1973). Use and interpretation of common statistical tests in method-comparison studies. Clinical Chemistry, 19(1), 49–57.WestgardJ.O.HuntM.R.1973Use and interpretation of common statistical tests in method-comparison studiesClinical Chemistry191495710.1093/clinchem/19.1.49Search in Google Scholar
White, H.D. (1977). Machine-readable social science data. Englewood, CO: Information Handling Services.WhiteH.D.1977Machine-readable social science dataEnglewood, COInformation Handling ServicesSearch in Google Scholar
Whittaker, M., Alper, M., Bennett, C.L., Hendren, S., Kaziunas, L., Mills, M., …, & West, S.M. (2019). Disability, bias, and AI. New York, NY: AI Now.WhittakerM.AlperM.BennettC.L.HendrenS.KaziunasL.MillsM.WestS.M.2019Disability, bias, and AINew York, NYAI NowSearch in Google Scholar
Wilholt, T. (2009). Bias and values in scientific research. Studies in History and Philosophy of Science: Part A, 40(1), 92–101.WilholtT.2009Bias and values in scientific researchStudies in History and Philosophy of Science: Part A4019210110.1016/j.shpsa.2008.12.005Search in Google Scholar
Wood, S.E. (2017). Police body cameras and professional responsibility: Public records and private evidence. Preservation, Digital Technology, and Culture, 46(1), 41–51.WoodS.E.2017Police body cameras and professional responsibility: Public records and private evidencePreservation, Digital Technology, and Culture461415110.1515/pdtc-2016-0030Search in Google Scholar
Yarger, L., Payton, F.C., & Neupane, B. (2020). Algorithmic equity in the hiring of underrepresented IT job candidates. Online Information Review, 44(2), 383–395.YargerL.PaytonF.C.NeupaneB.2020Algorithmic equity in the hiring of underrepresented IT job candidatesOnline Information Review44238339510.1108/OIR-10-2018-0334Search in Google Scholar
Zhang, P., & Benjamin, R.I. (2007). Understanding information related fields: A conceptual framework. Journal of the Association for Information Science and Technology, 58(13), 1934–1947.ZhangP.BenjaminR.I.2007Understanding information related fields: A conceptual frameworkJournal of the Association for Information Science and Technology58131934194710.1002/asi.20660Search in Google Scholar
Zimmer, M. (2008). Preface: Critical perspectives on web 2.0. First Monday, 13(3). https://firstmonday.org/ojs/index.php/fm/article/download/2137/1943ZimmerM.2008Preface: Critical perspectives on web 2.0First Monday133https://firstmonday.org/ojs/index.php/fm/article/download/2137/194310.5210/fm.v13i3.2137Search in Google Scholar
Zwitter, A. (2014). Big data ethics. Big Data and Society, 1(2), 1–6.ZwitterA.2014Big data ethicsBig Data and Society121610.1177/2053951714559253Search in Google Scholar