Open Access

Improving Time Use Measurement with Personal Big Data Collection – The Experience of the European Big Data Hackathon 2019

Journal of Official Statistics's Cover Image
Journal of Official Statistics
Special Issue on New Techniques and Technologies for Statistics

Cite

Barney, D. 2004. The Network Society. Cambridge: Polity Press.Search in Google Scholar

Bison, I., and A. Scalcon. 2018. From 07.00 to 22.00: A Dual-Earner Couple’s Typical Day in Italy: Old Questions and New Evidence from Social Sequence Analysis. Edited by G. Ritschard, and M. Studer. Sequence Analysis and Related Approaches.10.1007/978-3-319-95420-2_14Search in Google Scholar

Bison, I., M. Zeni, M. Busso, E. Bignotti, F. Giunchiglia, and G. Veltri. 2018. “ More Than Meets the Eyes: Complementing Surveys with Mobile Phone Digital Data Trail.” ESRA BigSurv18 Conference. Available at: https://www.bigsurv18.org/program2018?sess=52#222 (accessed May 2021).Search in Google Scholar

Castells, M. 2000. The Rise of the Network Society. The Information Age: Economy, Society and Culture. Volume I (2nd ed.). Oxford: Wiley-Blackwell.Search in Google Scholar

Chenu, A, and L. Lesnard. 2006. “Time Use Surveys: a Review of their Aims, Methods, and Results.” Archives Européennes de Sociologie / European Journal of Sociology, Cambridge University Press (CUP), 47(3): 335–359. Available at: http://www.jstor.org/stable/23998949 (accessed May 2021).10.1017/S0003975606000117Search in Google Scholar

De Montjoye, Y.A., C.A. Hidalgo, M. Verleysen, and V.D. Blondel. 2013. “Unique in the crowd: The privacy bounds of human mobility.” Scientific Reports 3: 1376. DOI: https://doi.org/10.1038/srep01376.10.1038/srep01376360724723524645Search in Google Scholar

Diou, C., I. Ioakeimidis, E. Charmandari, P. Kassari, I. Lekka, M. Mars, C. Bergh, T. Kechadi, G. Doyle, G.K. O’Malley G, Heimeier R, Lindroos AK, S. Sotiriou, E. Koukoula, S. Guillén, G. Lymperopoulos, N. Maglaveras, and A. Delopoulos. 2018. “BigO: Big Data Against Childhood Obesity.” European Society for Paediatric Endocrinology Vol. 89. Presented at: 57th Annual European Society of Pediatric Endocrinology; 27–29 September 2018; Athens, Greece. Available at: https://abstracts.eurospe.org/hrp/0089/hrp0089p3-p127.Search in Google Scholar

Dumazedier, J. 1975. “The Use of Time. Daily activities of urban and suburban population in twelve countries.” Edited by A. Szalai. Revue française de sociologie 16 no. 1: 125–129. DOI: https://doi.org/10.1080/00222216.1974.11970168.10.1080/00222216.1974.11970168Search in Google Scholar

ESSC (European Statistical System Committee). 2013. “Scheveningen Memorandum-Big Data and Official Statistics.” Adopted 27 September 2013. Luxembourg. Available at: http://ec.europa.eu/eurostat/documents/42577/43315/Scheveningenmemorandum-27-09-13 (accessed March 2016).Search in Google Scholar

ESSC (European Statistical System Committee). 2018. “Bucharest memorandum on Official Statistics in a datafied society (Trusted Smart Statistics).” DGINS Conference. Available at: https://ec.europa.eu/eurostat/web/ess/-/dgins2018-bucharest-memorandum-adopted (accessed May 2121).Search in Google Scholar

Eurostat. 2009. Harmonized European time use surveys, Guidelines 2008. Methodologies and Working Papers. Luxembourg: Office for Official Publications of the European Communities. Available at: https://ec.europa.eu/eurostat/documents/3859598/5909673/KS-RA-08-014-EN.PDF.pdf/a745ca2e-7dc6-48a9-a36c-000ad120380e?t=1414781526000 (accessed May 2121).Search in Google Scholar

Eurostat. 2019a. Harmonised European Time Use Surveys (HETUS) – 2018 Guidelines. Eurostat Manuals and Guidelines. Available at: https://ec.europa.eu/eurostat/documents/3859598/9710775/KSGQ-19-003-EN-N.pdf/ee48c0bd-7287-411a-86b6-fb0f6d5068cc?t=1554468617000 (accessed 20 May 2121).Search in Google Scholar

Eurostat. 2019b. European Big Data Hackathon. Available at: https://ec.europa.eu/eurostat/cros/system/files/european_big_data_hackathon_2019_-_description_20181119.pdf (accessed April 2020).Search in Google Scholar

Fernee, H., N. Sonck, and A. Scherpenzeel. 2013. “Data Collection with Smartphones: Experiences in a Time Use Survey.” NTTS-Conferences on New Techniques and Technologies for Statistics. Brussels, 5–7 March 2013;868-875 Available at: https://ec.europa.eu/eurostat/cros/system/files/NTTS2013%20Proceedings_0.pdf.Search in Google Scholar

Fernee, H., and N. Sonck. 2014. “Measuring Smarter – Time-Use Data Collected by Smartphones.” International Journal of Time Use Research 11(1): 94–111. DOI: https://dx.doi.org/10.13085/eIJTUR.11.1.94-111.10.13085/eIJTUR.11.1.94-111Search in Google Scholar

Gershuny, J. 2015. Time Use Research Methods. International Encyclopedia of the Social and Behavioral Sciences (Second Edition) 24.10.1016/B978-0-08-097086-8.44058-4Search in Google Scholar

Gershuny J., and O. Sullivan. 2019. What We Really Do All Day: Insights from the Centre for Time Use Research. Penguin Books Ltd.Search in Google Scholar

Giunchiglia, F., M. Zeni, E. Gobbi, E. Bignotti, and I. Bison. 2017. “Mobile Social Media and Academic Performance.” The 9th International Conference on Social Informatics (SocInfo 2017), September, 2017. Oxford, UK. DOI: https://doi.org/10.1007/978-3-319-67256-4_1.10.1007/978-3-319-67256-4_1Search in Google Scholar

Giunchiglia, F., M. Zeni, E. Gobbi, E. Bignotti, and I. Bison. 2018. “Mobile social media usage and academic performance.” Computers in Human Behavior 82: 177–185. DOI: https://doi.org/10.1016/j.chb.2017.12.041.10.1016/j.chb.2017.12.041Search in Google Scholar

Groves, R.M. 2011. “Three Eras of Survey Research.” Public Opinion Quarterly 75(5): 861–71. DOI: http://doi.org/10.1093/poq/nfr057.10.1093/poq/nfr057Search in Google Scholar

GSM Association. 2018. The Mobile Economy Europe 2018. Available at: https://www.gsmaintelligence.com/research/?file=884c77f3bc0a405b2d5fd356689be340anddownload (accessed April 2020).Search in Google Scholar

Hatuka, T., and E. Toch. 2017. “Being visible in public space: The normalisation of asymmetrical visibility.” Urban Studies 54(4): 984–998. DOI: https://doi.dox.-org/10.1177/0042098015624384.10.1177/0042098015624384Search in Google Scholar

Hellgren, M. 2014. “Extracting More Knowledge from Time Diaries?” Social Indicators Research119(3): 1517–1534. DOI: https://doi.org/10.1007/s11205-013-0558-6.10.1007/s11205-013-0558-6Search in Google Scholar

Hewitt, Eben. 2010 Cassandra: the definitive guide. O’Reilly Media, Inc.Search in Google Scholar

i-Log. 2019. i-Log on the Google Play Store. Available at: https://play.google.com/store/apps/details?id=it.unitn.disi.witmee.sensorlog (accessed April 2020).Search in Google Scholar

Juster, F., and F. Stafford. 1991. “The Allocation of Time: Empirical Findings, Behavioral Models, and Problems of Measurement.” Journal of Economic Literature 29(2): 471–522. Available at: http://www.jstor.org/stable/2727521 (accessed May 2021).Search in Google Scholar

Juster, F., H. Ono, and F. Stafford. 2004. Changing Times of American Youth: 1981–2003. Institute for Social Research. University of Michigan. Available at: http://ns.umich.edu/Releases/2004/Nov04/teen_time_report.pdf (accessed May 2021).Search in Google Scholar

Kramarczyk, J. 2015. “Spending Time on Media – Results of Using Multitasking Frequency Questionnaire In Poland.” International Journal of Time Use Research 12(1): 153–190. DOI: https://doi.org/10.13085/eIJTUR.10.1.153-190.10.13085/eIJTUR.10.1.153-190Search in Google Scholar

Kramarczyk, J., and M. Osowiecka. 2014. “Time is Running Differently on the Internet.” International Journal of Time Use Research 11(1): 94-111. DOI: http://doi.org//10.13085/eIJTUR.11.1.94-111.10.13085/eIJTUR.11.1.94-111Search in Google Scholar

Link M.W., J. Murphy, M.F. Schober, T.D. Buskirk, J. Hunter Childs, T. Casey Langer. 2014. “Mobile Technologies for Conducting, Augmenting and Potentially Replacing Surveys: Executive Summary of the AAPOR Task Force on Emerging Technologies in Public Opinion Research.” Public Opinion Quarterly 78: 779–87.10.1093/poq/nfu054Search in Google Scholar

Link, M. 2018. “New data strategies: nonprobability sampling, mobile, big data.” Quality Assurance in Education 26(2): 303–314. DOI: https://doi.org/10.1108/QAE-06-2017-0029.10.1108/QAE-06-2017-0029Search in Google Scholar

Maddalena, E., L.-D. Ibáñez, E. Simperl, R. Gomer, M. Zeni, D. Song, and F. Giunchiglia. 2019. “Hybrid Human Machine workflows for mobility management.” In Companion Proceedings of The 2019 World Wide Web Conference (WWW ’19). May 2019, San Francisco, USA: 102–109. DOI: https://doi.org/10.1145/3308560.3317056.10.1145/3308560.3317056Search in Google Scholar

Merz J. 2009. Time use and time budgets: Improvements, future challenges and recommendations. Society for the Study of Economic Inequality ECINEQ 125.Search in Google Scholar

Miller, G.A. 1998. WordNet: An electronic lexical database. MIT press.Search in Google Scholar

Minnen, J., J. Verbeylen, and I. Glorieux. 2018. Onderzoek naar de tijdsbesteding van leraren in het basis- en secundair onderwijs. Deel 1: Algemeen. (Time allocation of teachers in the primary and secondary school. Part 1: General). Vlaamse Overheid, Brussel: Vakgroep Sociologie, Onderzoeksgroep TOR 57 blz.Search in Google Scholar

Robinson, J.P. 1999. The Time-Diary Method: Structure and Uses. In Time Use Research in the Social Sciences. New York: Academic/Plenum Publishers.Search in Google Scholar

Robinson, J.P. 2002. “The time-diary method.” Time use research in the social sciences: 47–89. DOI: https://doi.org/10.1007/0-306-47155-8_3.10.1007/0-306-47155-8_3Search in Google Scholar

Runyan, J.D., T.A. Steenbergh, C. Bainbridge, D.A. Daugherty, L. Oke, and B.N. Fry. 2013. “A smartphone ecological momentary assessment/intervention ‘app’ for collecting real-time data and promoting self-awareness.” PLoS One 8(8). DOI: https://doi.org/10.1371/journal.pone.0071325.10.1371/journal.pone.0071325374374523977016Search in Google Scholar

Sorokin, P.A., and C.Q. Berger. 1939. Time-budgets of human behavior. Harvard University PressSearch in Google Scholar

Stella C., K. Fisher, E. Gilbert, L. Calderwood, T. Huskinson, A. Cleary, and J. Gershuny. 2018. “Using new technologies for time diary data collection: Instrument design and data quality findings from a mixed-mode pilot survey.” Social Indicators Research 137(1): 379–390. DOI: https://doi.org/10.1007/s11205-017-1569-5.10.1007/s11205-017-1569-5588488929651193Search in Google Scholar

Sugie, N.F. 2018. “Utilizing Smartphones to Study Disadvantaged and Hard-to-Reach Groups.” Sociological Methods and Research 47(3): 458 – 491. DOI: https://doi.org/10.1177/0049124115626176.10.1177/0049124115626176Search in Google Scholar

The Nielsen Company. 2018. The Nielsen Total Audience Report Q1 2018. Available at: https://www.nielsen.com/content/dam/corporate/us/en/reports-downloads/2018-reports/q1-2018-total-audience-report.pdf (accessed April 2020).Search in Google Scholar

United Nations. 2010. “In-depth review on time-use surveys, Economic Commission for Europe.” Conference of European Statisticians, Note by the German Federal Statistical Office. ECE/CES/2010/25. Paris, France, 2018. Available at: http://unstats.un.org/unsd/demographic/sconcerns/tuse/ (accessed April 2020).Search in Google Scholar

Vilhelmson, B., E. Elldèr, and E. Thulin. 2018. “What did we do when the Internet wasn’t around? Variation in free-time activities among three young-adult cohorts from 1990/1991, 2000/2001, and 2010/2011.” New Media and Society 20(8): 2898–2916. DOI: https://doi.org/10.1177/1461444817737296.10.1177/1461444817737296Search in Google Scholar

Vohra D. 2016. “Practical Hadoop Ecosystem.” Chapter in Apache Parquet: chap. 8. Apress. DOI: https://doi.org/10.1007/978-1-4842-2199-0_8.10.1007/978-1-4842-2199-0_8Search in Google Scholar

Wang, X.H., D.Q. Zhang, T. Gu, and H.K. Pung. 2004. “Ontology based context modeling and reasoning using OWL.” In IEEE annual conference on pervasive computing and communications workshops, March, 2004. 18-22. Orlando, FL, USA. DOI: https://doi.org/10.1109/PERCOMW.2004.1276898.10.1109/PERCOMW.2004.1276898Search in Google Scholar

Zaharia, M., R.S. Xin, P. Wendell, T. Das, M. Armbrust, A. Dave, X. Meng, J.Rosen, S. Venkataraman, and M.J. Franklin. 2016. “Apache spark: a unified engine for big data processing.” Communications of the ACM 59(11): 56–65. DOI: https://doi.org/10.1145/2934664.10.1145/2934664Search in Google Scholar

Zeni, M., I. Zaihrayeu, and F. Giunchiglia. 2014. “Multi-device activity logging.” ACM International Joint Conference on Pervasive and Ubiquitous Computing. September 13–17, 2014. 299–302. Seattle, WA, USA. DOI: http://dx.doi.org/10.1145/2638728.2638756/.Search in Google Scholar

Zeni, M. 2017. Bridging Sensor Data Streams and Human Knowledge. Trento: University of Trento. Available at: http://eprints-phd.biblio.unitn.it/2724/ (accessed April 2020).Search in Google Scholar

Zeni, M., W. Zhang, E. Bignotti, A. Passerini, and F. Giunchiglia. 2019. “Fixing Mislabeling by Human Annotators Leveraging Conflict Resolution and Prior Knowledge.” Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies 3(1): 1–23. DOI: https://doi.org/10.1145/3314419.10.1145/3314419Search in Google Scholar

eISSN:
2001-7367
Language:
English
Publication timeframe:
4 times per year
Journal Subjects:
Mathematics, Probability and Statistics