This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
AGE Platform Europe. (2016). AGE Platform Europe position on structural ageism. Brussels, Belgium.AGE Platform Europe2016Brussels, BelgiumSearch in Google Scholar
Alvarez-Lozano, J., Osmani, V., Mayora, O. et al. (2014). Tell me your apps and I will tell you your mood. In Conference on pervasive technologies related to assistive environments (PETRA’14) (pp. 1–7). Island of Rhodes: ACM Press.Alvarez-LozanoJ.OsmaniV.MayoraO.2014In17Island of RhodesACM PressSearch in Google Scholar
Ayalon, L. & Tesch-Römer, C. (eds.) (2018). Contemporary perspectives on ageism. Cham: Springer Open.AyalonL.Tesch-RömerC.(eds.)2018ChamSpringer Open10.1007/978-3-319-73820-8Search in Google Scholar
Bayot, R. K. & Gon, T. (2017). Age and gender classification of tweets using convolutional neural networks. In Machine learning, optimization, and big data (MOD 2017) (pp. 337–348). Volterra: Springer.BayotR. K.GonT.2017In337348VolterraSpringerSearch in Google Scholar
Bi, B., Shokouhi, M., Kosinski, M. & Graepel, T. (2013). Inferring the demographics of search users: Social data meets search queries. In Conference on World Wide Web (WWW’13) (pp. 131–140) Rio de Janeiro: ACM Press.BiB.ShokouhiM.KosinskiM.GraepelT.2013InConference on World Wide Web (WWW’13)131140Rio de JaneiroACM PressSearch in Google Scholar
Bijker, W. E., Hughes, T. P. & Pinch, T. J. (eds.) (1989). The social construction of technological systems. London: MIT Press.BijkerW. E.HughesT. P.PinchT. J.(eds.)1989LondonMIT PressSearch in Google Scholar
Bolukbasi, T., Chang, K.-W., Zou, J. Y., Saligrama, V., & Kalai, A. T. (2016). Man is to computer programmer as woman is to homemaker? Debiasing word embeddings. In Neural information processing systems (NIPS’16). Barcelona. Retrieved from https://www.semanticscholar.org/paper/Man-is-to-Computer-Programmer-as-Woman-is-to-Word-Bolukbasi-Chang/274459c52103f9b7880d0697aa28755ac3366987BolukbasiT.ChangK.-W.ZouJ. Y.SaligramaV.KalaiA. T.2016Man is to computer programmer as woman is to homemaker? Debiasing word embeddingsInBarcelonaRetrieved from https://www.semanticscholar.org/paper/Man-is-to-Computer-Programmer-as-Woman-is-to-Word-Bolukbasi-Chang/274459c52103f9b7880d0697aa28755ac3366987Search in Google Scholar
Bonchi, F., Hajian, S., Mishra, B. & Ramazzotti, D. (2017). Exposing the probabilistic causal structure of discrimination. International Journal of Data Science and Analytics, 3: 1–21.BonchiF.HajianS.MishraB.RamazzottiD.2017Exposing the probabilistic causal structure of discrimination312110.1007/s41060-016-0040-zSearch in Google Scholar
Boyd, D. & Crawford, K. (2012). Critical questions for big data. Information and Communication Society, 15: 662–679.BoydD.CrawfordK.2012Critical questions for big data1566267910.1080/1369118X.2012.678878Search in Google Scholar
Bucholtz, M. & Hall, K. (2005). Identity and interaction: A sociocultural linguistic approach. Discourse Studies, 7: 585–614.BucholtzM.HallK.2005Identity and interaction: A sociocultural linguistic approach758561410.1177/1461445605054407Search in Google Scholar
Böhmer, M., Hecht, B., Schöning J.J., Krüger, A., & Bauer, G. (2011). Falling asleep with Angry Birds, Facebook and Kindle: A large scale study on mobile application usage. In Human–computer interaction with mobile devices and services (MobileHCI’11) (pp. 47–56). Stockholm: ACM Press.BöhmerM.HechtB.SchöningJ.J.KrügerA.BauerG.2011Falling asleep with Angry Birds, Facebook and Kindle: A large scale study on mobile application usageIn4756StockholmACM Press10.1145/2037373.2037383Search in Google Scholar
Calasanti, T. & King, N. (2015). Intersectionality and age. In J. Twigg & W. Martin (eds.), Routledge handbook of cultural gerontology (pp. 193–200). London: Routledge/Taylor and Francis.CalasantiT.KingN.2015Intersectionality and ageInTwiggJ.MartinW.(eds.)193200LondonRoutledge/Taylor and FrancisSearch in Google Scholar
Castells, M. (2009). Communication power. United Kingdom: Oxford University Press.CastellsM.2009United KingdomOxford University PressSearch in Google Scholar
Castells, M., Fernández-Ardèvol, M., Linchuan Qiu, J. & Sey, A. (2006). Mobile communication and society: A global perspective. Cambridge, MA: The MIT Press.CastellsM.Fernández-ArdèvolM.Linchuan QiuJ.SeyA.2006Cambridge, MAThe MIT Press10.7551/mitpress/4692.001.0001Search in Google Scholar
Choudrie, J. & Vyas, A. (2014). Silver surfers adopting and using Facebook? A quantitative study of Hertfordshire, UK applied to organizational and social change. Technological Forecasting and Social Change, 89: 293–305.ChoudrieJ.VyasA.2014Silver surfers adopting and using Facebook? A quantitative study of Hertfordshire, UK applied to organizational and social change8929330510.1016/j.techfore.2014.08.007Search in Google Scholar
Culotta, A., Ravi, N. K. & Cutler, J. (2016). Predicting Twitter user demographics using distant supervision from website traffic data. Journal of Artificial Intelligence Research, 55: 389–408.CulottaA.RaviN. K.CutlerJ.2016Predicting Twitter user demographics using distant supervision from website traffic data5538940810.1613/jair.4935Search in Google Scholar
De Montjoye, Y.-A., Quoidbach, J., Robic, F. & Pentland, A. (2013). Predicting personality using novel mobile phone-based metrics. In A. Greenberg, W. Kennedy & N. Bos (eds.), Social computing, behavioral-cultural modeling and prediction (pp. 48–55). Heidelberg: SpringerDe MontjoyeY.-A.QuoidbachJ.RobicF.PentlandA.2013Predicting personality using novel mobile phone-based metricsInGreenbergA.KennedyW.BosN.(eds.)4855HeidelbergSpringer10.1007/978-3-642-37210-0_6Search in Google Scholar
Eckert, P. (1998). Age as a sociolinguistic variable. In F. Coulmas (ed.), The handbook of sociolinguistics. Oxford, United Kingdom: Blackwell.EckertP.1998Age as a sociolinguistic variableInCoulmasF.(ed.)Oxford, United KingdomBlackwell10.1002/9781405166256.ch9Search in Google Scholar
EPSC. (2018). The age of artificial intelligence – Towards a European strategy for human-centric machines. Heidelberg: SpringerEPSC2018HeidelbergSpringerSearch in Google Scholar
Eubanks, V. (2018). Automating inequality: How high-tech tools profile, police and punish the poor. New York: St Martin’s Press.EubanksV.2018New YorkSt Martin’s PressSearch in Google Scholar
Eurostat. (2017). Population structure and ageing. Retrieved from http://ec.europa.eu/eurostat/statistics-explained/index.php/Population_structure_and_ageing [Accessed 2018, March 1].Eurostat2017Retrieved from http://ec.europa.eu/eurostat/statistics-explained/index.php/Population_structure_and_ageing [Accessed 2018, March 1]Search in Google Scholar
Eurostat. (2018). Individuals Internet use. Last Internet use in the last 3 months. Table [isoc_ci_ifp_iu]. Retrieved from http://ec.europa.eu/eurostat/web/products-datasets/-/isoc_ci_ifp_iu [Accessed 2018, March 1].Eurostat2018Table [isoc_ci_ifp_iu]. Retrieved from http://ec.europa.eu/eurostat/web/products-datasets/-/isoc_ci_ifp_iu [Accessed 2018, March 1]Search in Google Scholar
Ferdous, R., Osmani, V. & Mayora, O. (2015). Smartphone app usage as a predictor of perceived stress levels at workplace. In Proceedings of the 2015 9th international conference on pervasive computing technologies for healthcare (PervasiveHealth’15) (pp. 225–228). https://doi.org/10.4108/icst.pervasive-health.2015.260192. Istanbul: European Union Digital Library.FerdousR.OsmaniV.MayoraO.2015Smartphone app usage as a predictor of perceived stress levels at workplaceIn225228https://doi.org/10.4108/icst.pervasive-health.2015.260192IstanbulEuropean Union Digital LibrarySearch in Google Scholar
Fernández-Ardèvol, M. & Ivan, L. (2013). Older people and mobile communication in two European contexts. Romanian Journal of Communication and Public Relations, 15: 83–101.Fernández-ArdèvolM.IvanL.2013Older people and mobile communication in two European contexts158310110.21018/rjcpr.2013.3.196Search in Google Scholar
Ferreira, D., Goncalves, J., Kostakos, V. et al. (2014). Contextual experience sampling of mobile application micro-usage. In Human–computer interaction with mobile devices & services (MobileHCI’14) (pp. 91–100). Toronto: ACM Press.FerreiraD.GoncalvesJ.KostakosV.2014Contextual experience sampling of mobile application micro-usageIn91100TorontoACM Press10.1145/2628363.2628367Search in Google Scholar
Ferreira, D., Kostakos, V. & Dey, A. K. (2012). Lessons learned from large-scale user studies: Using Android market as a source of data. International Journal of Mobile Human Computer Interaction, 4: 28–43.FerreiraD.KostakosV.DeyA. K.2012Lessons learned from large-scale user studies: Using Android market as a source of data4284310.4018/jmhci.2012070102Search in Google Scholar
Garattini, C. & Prendergast, D. (2015). Critical reflections on ageing and technology in the twenty-first century. In D. Prendergast & C. Garattini (eds.), Aging and the digital life course (pp. 1–15). New York: Berghahn Books.GarattiniC.PrendergastD.2015Critical reflections on ageing and technology in the twenty-first centuryInPrendergastD.GarattiniC.(eds.)115New YorkBerghahn BooksSearch in Google Scholar
Greenwald, A. G. & Banaji, M. R. (1995). Implicit social cognition: Attitudes, self-esteem, and stereotypes. Psychological Review, 102: 4–27.GreenwaldA. G.BanajiM. R.1995Implicit social cognition: Attitudes, self-esteem, and stereotypes10242710.1037/0033-295X.102.1.4Search in Google Scholar
Greenwood, S., Perrin, A. & Duggan, M. (2016). Social media update. Retrieved from http://www.pewinternet.org/2016/11/11/social-media-update-2016/GreenwoodS.PerrinA.DugganM.2016Retrieved from http://www.pewinternet.org/2016/11/11/social-media-update-2016/Search in Google Scholar
Hajian, S. & Domingo-Ferrer, J. (2013). A methodology for direct and indirect discrimination prevention in data mining. IEEE Transactions on Knowledge and Data Engineering, 25: 1445–1459.HajianS.Domingo-FerrerJ.2013A methodology for direct and indirect discrimination prevention in data mining251445145910.1109/TKDE.2012.72Search in Google Scholar
Hendricks, J. (2005). Ageism: Looking across the margin in the new millennium. Generations, 29: 5–7.HendricksJ.2005Ageism: Looking across the margin in the new millennium2957Search in Google Scholar
Holmes, J. (2013). An introduction to sociolinguistics (4th ed.). New York: Routledge.HolmesJ.20134th ed.New YorkRoutledge10.4324/9781315833057Search in Google Scholar
Holz, C., Bentley, F., Church, K. & Patel, M. (2015). “I’m just on my phone and they’re watching TV”: Quantifying mobile device use while watching television. In Conference on interactive experiences for TV and online video (TVX’15). Brussels: ACM PressHolzC.BentleyF.ChurchK.PatelM.2015InConference on interactive experiences for TV and online video (TVX’15)BrusselsACM Press10.1145/2745197.2745210Search in Google Scholar
Ikebe, Y., Katagiri, M. & Takemura, H. (2012). Friendship prediction using semi-supervised learning of latent features in smartphone usage data. In Knowledge discovery and information retrieval (KDIR’2012). Barcelona: Science and Technology Publications, Lda.IkebeY.KatagiriM.TakemuraH.2012Friendship prediction using semi-supervised learning of latent features in smartphone usage dataInBarcelonaScience and Technology Publications, LdaSearch in Google Scholar
Jacobson, J., Lin, C. Z. & McEwen, R. (2017). Aging with technology: Seniors and mobile connections. Canadian Journal of Communication, 42: 331.JacobsonJ.LinC. Z.McEwenR.2017Aging with technology: Seniors and mobile connections4233110.22230/cjc.2017v42n2a3221Search in Google Scholar
Jensen, M. (2013). Challenges of privacy protection in big data analytics. In BigData’13 (pp. 235–238). doi: 10.1109/BigData.Congress.2013.39JensenM.2013Challenges of privacy protection in big data analyticsIn23523810.1109/BigData.Congress.2013.39Open DOISearch in Google Scholar
Jones, S. L., Ferreira, D., Hosio, S., Goncalves, J., & Kostakos, V. (2015). Revisitation analysis of smartphone app use. In Pervasive and ubiquitous computing (UbiComp’15) (pp. 1197–1208). Osaka: ACM PressJonesS. L.FerreiraD.HosioS.GoncalvesJ.KostakosV.2015Revisitation analysis of smartphone app useIn11971208OsakaACM Press10.1145/2750858.2807542Search in Google Scholar
Karikoski, J. & Soikkeli, T. (2013). Contextual usage patterns in smartphone communication services. Personal and Ubiquitous Computing, 17: 491–502.KarikoskiJ.SoikkeliT.2013Contextual usage patterns in smartphone communication services1749150210.1007/s00779-011-0503-0Search in Google Scholar
Kitchin, R. (2014). The data revolution: Big data, open data, data infrastructures and their consequences. Los Angeles: Sage.KitchinR.2014Los AngelesSage10.4135/9781473909472Search in Google Scholar
Kiukkonen, N., Blom, J., Dousse, O., Gatica-Perez, D., & Laurila, J. (2010). Towards rich mobile phone datasets: Lausanne data collection campaign. In Pervasive services (ICPS’10). Berlin.KiukkonenN.BlomJ.DousseO.Gatica-PerezD.LaurilaJ.2010Towards rich mobile phone datasets: Lausanne data collection campaignInBerlinSearch in Google Scholar
Kosinski, M., Stillwell, D. & Graepel, T. (2013). Private traits and attributes are predictable from digital records of human behavior. National Academy of Sciences, 110: 5802–5805.KosinskiM.StillwellD.GraepelT.2013Private traits and attributes are predictable from digital records of human behavior1105802580510.1073/pnas.1218772110Search in Google Scholar
Lagacé, M., Charmarkeh, H., Tanguay, J. & Annick, L. (2015). How ageism contributes to the second-level digital divide: The case of Canadian seniors. Journal of Technologies and Human Usability, 11: 1–13.LagacéM.CharmarkehH.TanguayJ.AnnickL.2015How ageism contributes to the second-level digital divide: The case of Canadian seniors1111310.18848/2381-9227/CGP/v11i04/56439Search in Google Scholar
Lee, U., Lee, J., Ko, M. et al. (2014). Hooked on smartphones: An exploratory study on smartphone overuse among college students. In Human factors in computing systems (CHI’14) (pp. 2327–2336). Toronto: ACM PressLeeU.LeeJ.KoM.2014Hooked on smartphones: An exploratory study on smartphone overuse among college studentsIn23272336TorontoACM Press10.1145/2556288.2557366Search in Google Scholar
Letouzé, E. (2015). Big data and development: General overview primer. Data-Pop Alliance. Retrieved from http://datapopalliance.org/wp-content/uploads/2015/12/Big-Data-Dev-Overview.pdfLetouzéE.2015Data-Pop AllianceRetrieved from http://datapopalliance.org/wp-content/uploads/2015/12/Big-Data-Dev-Overview.pdfSearch in Google Scholar
Liao, L., Jiang, J., Ding, Y. et al. (2014). Lifetime lexical variation in social media. In Artificial intelligence (AAAI’14) (pp. 1643–1649).LiaoL.JiangJ.DingY.2014Lifetime lexical variation in social mediaIn1643164910.1609/aaai.v28i1.8942Search in Google Scholar
Ling, R., Bertel, T. F. & Sundsøy, P. R. (2012). The socio-demographics of texting: An analysis of traffic data. New Media & Society, 14: 281–298.LingR.BertelT. F.SundsøyP. R.2012The socio-demographics of texting: An analysis of traffic data1428129810.1177/1461444811412711Search in Google Scholar
Liu, J-.Y. & Yang, Y.-H. (2012). Inferring personal traits from music listening history. In Music information retrieval with user-centered and multimodal strategies (MIRUM ’12) (p. 31).LiuJ-.Y.YangY.-H.2012Inferring personal traits from music listening historyIn3110.1145/2390848.2390856Search in Google Scholar
Mihailidis, P. (2014). A tethered generation: Exploring the role of mobile phones in the daily life of young people. Mobile Media & Communication, 2: 58–72.MihailidisP.2014A tethered generation: Exploring the role of mobile phones in the daily life of young people2587210.1177/2050157913505558Search in Google Scholar
Möller, A., Kranz, M., Schmid, B., Roalter, L. & Diewald, S. (2013). Investigating self-reporting behavior in long-term studies. In Human factors in computing systems (CHI’13) (pp. 2931–2940). Paris: ACM Press.MöllerA.KranzM.SchmidB.RoalterL.DiewaldS.2013Investigating self-reporting behavior in long-term studiesIn29312940ParisACM Press10.1145/2470654.2481406Search in Google Scholar
Neugarten, B. L. (1996). The meanings of age: Selected papers of Bernice L. Neugarten. Chicago, IL: University of Chicago Press.NeugartenB. L.1996Chicago, ILUniversity of Chicago PressSearch in Google Scholar
Nguyen, D., Gravel, R., Trieschnigg, D. & Meder, T. (2013). “How old do you think I am?”: A study of language and age in Twitter. In AAAI conference on weblogs and social media (pp. 439–448). Palo Alto, CA: AAAI Press.NguyenD.GravelR.TrieschniggD.MederT.2013“How old do you think I am?”: A study of language and age in TwitterIn439448Palo Alto, CAAAAI PressSearch in Google Scholar
Nguyen, D., Trieschnigg, D., Doğruöz, A. S. et al. (2014). Why gender and age prediction from tweets is hard: Lessons from a crowdsourcing experiment. In The annual meeting of the EPSRC network on vision & language and the technical meeting of the European network on integrating vision and language: A workshop of the international conference on computational linguistics (COLING 2014) (pp. 1950–1961). Dublin, Ireland: COLING.NguyenD.TrieschniggD.DoğruözA. S.2014Why gender and age prediction from tweets is hard: Lessons from a crowdsourcing experimentIn19501961Dublin, IrelandCOLINGSearch in Google Scholar
O’Neil, C. (2016). Weapons of math destruction. How big data increases inequality and threatens democracy. New York: Broadway Books.O’NeilC.2016New YorkBroadway BooksSearch in Google Scholar
Officer, A. & de la Fuente-Núñez, V. (2018). A global campaign to combat ageism. Bulletin of the World Health Organization, 96: 295–296.OfficerA.de la Fuente-NúñezV.2018A global campaign to combat ageism9629529610.2471/BLT.17.202424Search in Google Scholar
Oktay, H., Firat, A. & Ertem, Z. (2012). Demographic breakdown of Twitter users: An analysis based on names. ASE BIGDATA/SOCIALCOM/CYBERSECURITY, 1–11.OktayH.FiratA.ErtemZ.2012Demographic breakdown of Twitter users: An analysis based on names111Search in Google Scholar
Oreglia, E. & Kaye, J. “Jofish” (2012). A gift from the city: Mobile phones in rural China. In Computer-supported cooperative work and social computing (CSCW’15) (pp. 137–146). Seattle: ACM Press.OregliaE.KayeJ. “Jofish”2012A gift from the city: Mobile phones in rural ChinaIn137146SeattleACM Press10.1145/2145204.2145228Search in Google Scholar
Ørmen, J. & Thorhauge, A. M. (2015). Smartphone log data in a qualitative perspective. Mobile Media & Communication, 3: 335–350.ØrmenJ.ThorhaugeA. M.2015Smartphone log data in a qualitative perspective333535010.1177/2050157914565845Search in Google Scholar
Oulasvirta, A., Rattenbury, T., Ma, L. & Raita, E. (2012). Habits make smartphone use more pervasive. Personal and Ubiquitous Computing, 16: 105–114.OulasvirtaA.RattenburyT.MaL.RaitaE.2012Habits make smartphone use more pervasive1610511410.1007/s00779-011-0412-2Search in Google Scholar
Pedreschi, D., Ruggieri, S. & Turini, F. (2009). Measuring discrimination in socially-sensitive decision records. In SIAM international conference on data mining (pp. 581–592). Nevada: Society for Industrial and Applied MathematicsPedreschiD.RuggieriS.TuriniF.2009Measuring discrimination in socially-sensitive decision recordsIn581592NevadaSociety for Industrial and Applied Mathematics10.1137/1.9781611972795.50Search in Google Scholar
Peersman, C., Daelemans, W. & Van Vaerenbergh, L. (2011). Predicting age and gender in online social networks. In International workshop on search and mining user-generated contents (SMUC’11), 2011, October 28, Glasgow, Scotland, UK (pp. 37–44). ACM Press.PeersmanC.DaelemansW.Van VaerenberghL.2011InInternational workshop on search and mining user-generated contents (SMUC’11)2011, October 28Glasgow, Scotland, UK3744ACM Press10.1145/2065023.2065035Search in Google Scholar
Perozzi, B. & Skiena, S. (2015a). Exact age prediction in social networks. In International conference on world wide web (pp. 91–92). Florence: ACM Press.PerozziB.SkienaS.2015aExact age prediction in social networksIn9192FlorenceACM Press10.1145/2740908.2742765Search in Google Scholar
Popov, V., Kosinski, M., Stillwell, D. & Kielczewski, B. (2018). Apply magic sauce. Retrieved from https://applymagicsauce.com/research.html [Accessed 2018, January 1].PopovV.KosinskiM.StillwellD.KielczewskiB.2018Retrieved from https://applymagicsauce.com/research.html [Accessed 2018, January 1]Search in Google Scholar
Rahmati, A., Tossell, C., Shepard, C., Kortum, P. & Zhong, L. (2012). Exploring iPhone usage. In Human–computer interact with mobile devices and services (MobileHCI’11). San Francisco: ACM PressRahmatiA.TossellC.ShepardC.KortumP.ZhongL.2012Exploring iPhone usageInSan FranciscoACM Press10.1145/2371574.2371577Search in Google Scholar
Rieder, B. & Röhle, T. (2012). Digital methods: Five challenges. In D. M. Berry (ed.), Understanding digital humanities. London: Palgrave Macmillan.RiederB.RöhleT.2012Digital methods: Five challengesInBerryD. M.(ed.)LondonPalgrave MacmillanSearch in Google Scholar
Righi, V., Sayago, S., Rosales, A. et al. (2018). Co-designing with a community of older learners for over 10 years by moving user-driven participation from the margin to the centre. CoDesign, 14: 32–44.RighiV.SayagoS.RosalesA.2018Co-designing with a community of older learners for over 10 years by moving user-driven participation from the margin to the centre14324410.1080/15710882.2018.1424206Search in Google Scholar
Roca Salvatella. (2016). La brecha digital en la ciudad de Barcelona. Barcelona, Spain.SalvatellaRoca2016Barcelona, SpainSearch in Google Scholar
Rogers, Y., Paay, J., Brereton, M., Vaisutis, K., Marsden, G. & Vetere, F. (2014). Never too old: Engaging retired people inventing the future with MaKey. In Human factors in computing systems (CHI’14) (pp. 3913–3922). Toronto: ACM PressRogersY.PaayJ.BreretonM.VaisutisK.MarsdenG.VetereF.2014Never too old: Engaging retired people inventing the future with MaKeyIn39133922TorontoACM Press10.1145/2556288.2557184Search in Google Scholar
Rosales, A. & Fernández-Ardèvol, M. (2016a). Beyond WhatsApp: Older people and smartphones. Romanian Journal of Communication and Public Relations, 18: 27–47.RosalesA.Fernández-ArdèvolM.2016aBeyond WhatsApp: Older people and smartphones18274710.21018/rjcpr.2016.1.200Search in Google Scholar
Rosales, A. & Fernández-Ardèvol, M. (2016b). Smartphones, apps and older people’s interests: From a generational perspective. In Human–computer interaction with mobile devices and services (MobileHCI’16) (pp. 491–503). Florence: ACM Press.RosalesA.Fernández-ArdèvolM.2016bSmartphones, apps and older people’s interests: From a generational perspectiveIn491503FlorenceACM Press10.1145/2935334.2935363Search in Google Scholar
Rosenthal, S. & McKeown, K. (2011). Age prediction in blogs: A study of style, content, and online behavior in pre-and post-social media generations. In Meeting of the Association for Computational Linguistics: Human language technologies (pp. 763–772). Portland: Association for Computational LinguisticsRosenthalS.McKeownK.2011Age prediction in blogs: A study of style, content, and online behavior in pre-and post-social media generationsIn763772PortlandAssociation for Computational LinguisticsSearch in Google Scholar
Sawchuk, K. & Crow, B. (2011). Into the grey zone: Seniors, cell phones and milieus that matter. WI: Journal of Mobile Media, 5.SawchukK.CrowB.2011Into the grey zone: Seniors, cell phones and milieus that matter5Search in Google Scholar
Schäfer, M. T. & Van Es, K. (2017). The datafied society: Studying culture through data. Amsterdam: Amsterdam University Press.SchäferM. T.Van EsK.2017AmsterdamAmsterdam University PressSearch in Google Scholar
Schwartz, H. A., Eichstaedt, J. C., Kern, M. L. et al. (2013). Personality, gender, and age in the language of social media: The open-vocabulary approach. PLoS One, 8: e73791.SchwartzH. A.EichstaedtJ. C.KernM. L.2013Personality, gender, and age in the language of social media: The open-vocabulary approach8e7379110.1371/journal.pone.0073791Search in Google Scholar
Selwyn, N., Gorard, S., Furlong, J. & Madden, L. (2003). Older adults’ use of information and communications technology in everyday life. Ageing and Society, 23: 561–582.SelwynN.GorardS.FurlongJ.MaddenL.2003Older adults’ use of information and communications technology in everyday life2356158210.1017/S0144686X03001302Search in Google Scholar
Shin, C., Hong, J.-H. & Dey, A. K. (2012). Understanding and prediction of mobile application usage for smart phones. In Pervasive and ubiquitous computing (UbiComp’12) (p. 173). Pittsburgh: ACM PressShinC.HongJ.-H.DeyA. K.2012Understanding and prediction of mobile application usage for smart phonesIn173PittsburghACM Press10.1145/2370216.2370243Search in Google Scholar
Singh, V. K., Freeman, L., Lepri, B. & Pentland, A. (2013). Predicting spending behavior using socio-mobile features. In Social computing (pp. 174–179). Washington: IEEE Computer Society PressSinghV. K.FreemanL.LepriB.PentlandA.2013Predicting spending behavior using socio-mobile featuresIn174179WashingtonIEEE Computer Society Press10.1109/SocialCom.2013.33Search in Google Scholar
Smith, M., Szongott, C., Henne, B., Voigt, G. Von (2012). Big data privacy issues in public social media. Digital Ecosystems Technologies (DEST’12). Campione d’Italia: IEEE Computer Society PressSmithM.SzongottC.HenneB.VoigtG. Von2012Big data privacy issues in public social mediaCampione d’ItaliaIEEE Computer Society Press10.1109/DEST.2012.6227909Search in Google Scholar
Srinivasan, V., Moghaddam, S., Mukherji, A. et al. (2014). MobileMiner: Mining your frequent patterns on your phone. In Joint conference on pervasive and ubiquitous computing (UbiComp’14) (pp. 389–400). Seattle: ACM Press.SrinivasanV.MoghaddamS.MukherjiA.2014In389400SeattleACM PressSearch in Google Scholar
Stocchetti, M. (2018). Invisibility, inequality and the dialectics of the real in the digital age. Interaçoes, 34: 23–46.StocchettiM.2018Invisibility, inequality and the dialectics of the real in the digital age34234610.31211/interacoes.n34.2018.a2Search in Google Scholar
Uricchio, W. (2017). Data, culture and the ambivalence of algorithms. In M. T. Schäfer & K. Van Es (eds.), The datafied society: Studying culture through data (pp. 125–137). Amsterdam, Amsterdam University PressUricchioW.2017Data, culture and the ambivalence of algorithmsInSchäferM. T.Van EsK.(eds.)125137AmsterdamAmsterdam University Press10.1515/9789048531011-011Search in Google Scholar
Wagner, D. T., Rice, A. & Beresford, A. R. (2013). Device analyzer: Understanding smartphone usage. In International conference on mobile and ubiquitous systems (pp. 1–12). Tokyo: SpringerWagnerD. T.RiceA.BeresfordA. R.2013Device analyzer: Understanding smartphone usageIn112TokyoSpringer10.1007/978-3-319-11569-6_16Search in Google Scholar
Xu, R., Frey, R. M., Fleisch, E. & Ilic, A. (2016). Understanding the impact of personality traits on mobile app adoption – Insights from a large-scale field study. Computers in Human Behavior, 62: 244–256.XuR.FreyR. M.FleischE.IlicA.2016Understanding the impact of personality traits on mobile app adoption – Insights from a large-scale field study6224425610.1016/j.chb.2016.04.011Search in Google Scholar
Yan, T., Chu, D., Ganesan, D., Kansal, A. & Liu, J. (2012). Fast app launching for mobile devices using predictive user context. In Mobile systems, applications, and services (MobiSys’12) (pp. 113–126). Low Wood Bay: ACM PressYanT.ChuD.GanesanD.KansalA.LiuJ.2012Fast app launching for mobile devices using predictive user contextIn113126Low Wood BayACM Press10.1145/2307636.2307648Search in Google Scholar