Estimating Determinants of Attrition in Eating Disorder Communities on Twitter: An Instrumental Variables Approach

Background The use of social media as a key health information source has increased steadily among people affected by eating disorders (EDs). Research has examined characteristics of individuals engaging in online communities, whereas little is known about discontinuation of engagement and the phenomenon of participants dropping out of these communities. Objective This study aimed to investigate the characteristics of dropout behaviors among eating disordered individuals on Twitter and to estimate the causal effects of personal emotions and social networks on dropout behaviors. Methods Using a snowball sampling method, we collected a set of individuals who self-identified with EDs in their Twitter profile descriptions, as well as their tweets and social networks, leading to 241,243,043 tweets from 208,063 users. Individuals’ emotions are measured from their language use in tweets using an automatic sentiment analysis tool, and network centralities are measured from users’ following networks. Dropout statuses of users are observed in a follow-up period 1.5 years later (from February 11, 2016 to August 17, 2017). Linear and survival regression instrumental variables models are used to estimate the effects of emotions and network centrality on dropout behaviors. The average levels of attributes among an individual’s followees (ie, people who are followed by the individual) are used as instruments for the individual’s attributes. Results Eating disordered users have relatively short periods of activity on Twitter with one half of our sample dropping out at 6 months after account creation. Active users show more negative emotions and higher network centralities than dropped-out users. Active users tend to connect to other active users, whereas dropped-out users tend to cluster together. Estimation results suggest that users’ emotions and network centralities have causal effects on their dropout behaviors on Twitter. More specifically, users with positive emotions are more likely to drop out and have shorter lasting periods of activity online than users with negative emotions, whereas central users in a social network have longer lasting participation than peripheral users. Findings on users’ tweeting interests further show that users who attempt to recover from EDs are more likely to drop out than those who promote EDs as a lifestyle choice. Conclusions Presence in online communities is strongly determined by the individual’s emotions and social networks, suggesting that studies analyzing and trying to draw condition and population characteristics through online health communities are likely to be biased. Future research needs to examine in more detail the links between individual characteristics and participation patterns if better understanding of the entire population is to be achieved. At the same time, such attrition dynamics need to be acknowledged and controlled when designing online interventions so as to accurately capture their intended populations.

[1]  P. Keel,et al.  Do you "like" my photo? Facebook use maintains eating disorder risk. , 2014, The International journal of eating disorders.

[2]  M. Newman,et al.  Mixing patterns in networks. , 2002, Physical review. E, Statistical, nonlinear, and soft matter physics.

[3]  S. Crain,et al.  Misleading Health-Related Information Promoted Through Video-Based Social Media: Anorexia on YouTube , 2013, Journal of medical Internet research.

[4]  E. Deci,et al.  Intrinsic and Extrinsic Motivations: Classic Definitions and New Directions. , 2000, Contemporary educational psychology.

[5]  Munmun De Choudhury,et al.  Recovery Amid Pro-Anorexia: Analysis of Recovery in Social Media , 2016, CHI.

[6]  Munmun De Choudhury,et al.  #thyghgapp: Instagram Content Moderation and Lexical Variation in Pro-Eating Disorder Communities , 2016, CSCW.

[7]  M. Choudhury,et al.  "This Post Will Just Get Taken Down": Characterizing Removed Pro-Eating Disorder Social Media Content , 2016, CHI.

[8]  Fabrício Benevenuto,et al.  Comparing and combining sentiment analysis methods , 2013, COSN '13.

[9]  M. McPherson,et al.  Birds of a Feather: Homophily in Social Networks , 2001 .

[10]  E. Kaplan,et al.  Nonparametric Estimation from Incomplete Observations , 1958 .

[11]  Pavlin Mavrodiev,et al.  Understanding Popularity, Reputation, and Social Influence in the Twitter Society , 2017 .

[12]  K. Merikangas,et al.  Lifetime prevalence of mental disorders in U.S. adolescents: results from the National Comorbidity Survey Replication--Adolescent Supplement (NCS-A). , 2010, Journal of the American Academy of Child and Adolescent Psychiatry.

[13]  S. Paxton,et al.  A pilot evaluation of a social media literacy intervention to reduce risk factors for eating disorders , 2017, The International journal of eating disorders.

[14]  Lev Muchnik,et al.  Identifying influential spreaders in complex networks , 2010, 1001.5285.

[15]  A. Bardone-Cone,et al.  Investigating the impact of pro‐anorexia websites: a pilot study , 2006 .

[16]  Annie Y. S. Lau,et al.  The influence of social networking sites on health behavior change: a systematic review and meta-analysis , 2015, J. Am. Medical Informatics Assoc..

[17]  Barbara L. Fredrickson,et al.  Cultivating Positive Emotions to Optimize Health and Well-Being , 2000 .

[18]  David Card The Causal Effect of Education on Learning , 1999 .

[19]  Mei-Jie Zhang,et al.  Analyzing Competing Risk Data Using the R timereg Package. , 2011, Journal of statistical software.

[20]  Emma Rich,et al.  Anorexic dis(connection): managing anorexia as an illness and an identity. , 2006, Sociology of health & illness.

[21]  D.,et al.  Regression Models and Life-Tables , 2022 .

[22]  Glenn Geher,et al.  Emotional intelligence and the identification of emotion , 1996 .

[23]  John Suler,et al.  The Online Disinhibition Effect , 2004, Cyberpsychology Behav. Soc. Netw..

[24]  Rebecka Peebles,et al.  Eating Disorders in Children and Adolescents: State of the Art Review , 2014, Pediatrics.

[25]  O. Aalen,et al.  Survival and Event History Analysis: A Process Point of View , 2008 .

[26]  B. Vandermeer,et al.  Social media interventions for diet and exercise behaviours: a systematic review and meta-analysis of randomised controlled trials , 2014, BMJ Open.

[27]  Noah E. Friedkin,et al.  Theoretical Foundations for Centrality Measures , 1991, American Journal of Sociology.

[28]  Jonathan H. Wright,et al.  A Survey of Weak Instruments and Weak Identification in Generalized Method of Moments , 2002 .

[29]  A. Mitchell,et al.  Mortality rates in patients with anorexia nervosa and other eating disorders. A meta-analysis of 36 studies. , 2011, Archives of general psychiatry.

[30]  Mark Batey,et al.  A tale of two sites: Twitter vs. Facebook and the personality predictors of social media usage , 2012, Comput. Hum. Behav..

[31]  John M. Levine,et al.  To stay or leave?: the relationship of emotional and informational support to commitment in online health support groups , 2012, CSCW.

[32]  M E J Newman,et al.  Finding and evaluating community structure in networks. , 2003, Physical review. E, Statistical, nonlinear, and soft matter physics.

[33]  Jason B Colditz,et al.  Social Media Use and Perceived Social Isolation Among Young Adults in the U.S. , 2017, American journal of preventive medicine.

[34]  D. Rubin,et al.  A comparison of dimensional models of emotion: Evidence from emotions, prototypical events, autobiographical memories, and words , 2009, Memory.

[35]  A. Barak,et al.  The benign online disinhibition effect: Could situational factors induce self-disclosure and prosocial behaviors? , 2015 .

[36]  E. Verhagen,et al.  Distinguishing between causal and non-causal associations: implications for sports medicine clinicians , 2017, British Journal of Sports Medicine.

[37]  Tsung Teng Chen,et al.  Knowledge sharing in interest online communities: A comparison of posters and lurkers , 2014, Comput. Hum. Behav..

[38]  Pavlin Mavrodiev,et al.  Social resilience in online communities: the autopsy of friendster , 2013, COSN '13.

[39]  Sanna Malinen,et al.  Understanding user participation in online communities: A systematic literature review of empirical studies , 2015, Comput. Hum. Behav..

[40]  C. Flavián,et al.  New members' integration: key factor of success in online travel communities. , 2013 .

[41]  Julie Hepworth,et al.  An Interpretative Phenomenological Analysis of Participation in a Pro-anorexia Internet Site and Its Relationship with Disordered Eating , 2006, Journal of health psychology.

[42]  P. Kollock,et al.  The economies of online cooperation , 2002 .

[43]  P. Räsänen,et al.  Pro-Anorexia and Anti-Pro-Anorexia Videos on YouTube: Sentiment Analysis of User Responses , 2015, Journal of medical Internet research.

[44]  Chin-Chung Tsai,et al.  Sensation seeking and internet dependence of Taiwanese high school adolescents , 2000, Comput. Hum. Behav..

[45]  Eric T. G. Wang,et al.  Understanding knowledge sharing in virtual communities: An integration of social capital and social cognitive theories , 2006, Decis. Support Syst..

[46]  C. DeJong,et al.  Treatment dropout in web-based cognitive behavioral therapy for patients with eating disorders , 2017, Psychiatry Research.

[47]  Stephen B. Seidman,et al.  Network structure and minimum degree , 1983 .

[48]  Ingmar Weber,et al.  Pro-Anorexia and Pro-Recovery Photo Sharing: A Tale of Two Warring Tribes , 2012, Journal of medical Internet research.

[49]  David Gefen,et al.  Virtual Community Attraction: Why People Hang Out Online , 2006, J. Comput. Mediat. Commun..

[50]  G. Arbanas Diagnostic and Statistical Manual of Mental Disorders (DSM-5) , 2015 .

[51]  Sinan Aral,et al.  Exercise contagion in a global social network , 2017, Nature Communications.

[52]  Tomoya Sagara,et al.  Emotional , 2020, Encyclopedia of Evolutionary Psychological Science.

[53]  M. De Choudhury Anorexia on Tumblr: A Characterization Study , 2015 .

[54]  Emma Corstorphine,et al.  Cognitive–Emotional–Behavioural Therapy for the eating disorders: working with beliefs about emotions , 2006 .

[55]  Sean P. Goggins,et al.  Quantifying the Effect of Informational Support on Membership Retention in Online Communities through Large-Scale Data Analytics , 2018, Comput. Hum. Behav..

[56]  Munmun De Choudhury,et al.  Quantifying and Predicting Mental Illness Severity in Online Pro-Eating Disorder Communities , 2016, CSCW.

[57]  Mark S. Ackerman,et al.  Contribution, commercialization & audience: understanding participation in an online creative community , 2009, GROUP.

[58]  Hosung Park,et al.  What is Twitter, a social network or a news media? , 2010, WWW '10.

[59]  G. Eysenbach The Law of Attrition , 2005, Journal of medical Internet research.

[60]  Alina Arseniev-Koehler,et al.  #Proana: Pro-Eating Disorder Socialization on Twitter. , 2016, The Journal of adolescent health : official publication of the Society for Adolescent Medicine.

[61]  Carl A Latkin,et al.  Social Network Assessments and Interventions for Health Behavior Change: A Critical Review , 2015, Behavioral medicine.

[62]  H. Kordy,et al.  Language Use in Eating Disorder Blogs , 2013 .

[63]  Samer Faraj,et al.  Why Should I Share? Examining Social Capital and Knowledge Contribution in Electronic Networks of Practice , 2005, MIS Q..

[64]  L. Lien,et al.  The development of bulimic symptoms from adolescence to young adulthood in females and males: a population-based longitudinal cohort study. , 2012, The International journal of eating disorders.

[65]  Munmun De Choudhury,et al.  Multimodal Classification of Moderated Online Pro-Eating Disorder Content , 2017, CHI.

[66]  Juan-Zi Li,et al.  Semantic Mining of Social Networks , 2015, Semantic Mining of Social Networks.

[67]  Paola Tubaro,et al.  Online networks of eating-disorder websites: why censoring pro-ana might be a bad idea , 2013, Perspectives in public health.

[68]  D. Borzekowski,et al.  e-Ana and e-Mia: A content analysis of pro-eating disorder Web sites. , 2010, American journal of public health.

[69]  Joon Koh,et al.  Encouraging participation in virtual communities , 2007, CACM.

[70]  Natalya N. Bazarova,et al.  Self‐Disclosure in Social Media: Extending the Functional Approach to Disclosure Motivations and Characteristics on Social Network Sites , 2014 .

[71]  Craig Ross,et al.  The Influence of Shyness on the Use of Facebook in an Undergraduate Sample , 2009, Cyberpsychology Behav. Soc. Netw..

[72]  Karen Sparck Jones A statistical interpretation of term specificity and its application in retrieval , 1972 .

[73]  Edward M. Reingold,et al.  Graph drawing by force‐directed placement , 1991, Softw. Pract. Exp..

[74]  Joshua D. Angrist,et al.  Identification of Causal Effects Using Instrumental Variables , 1993 .

[75]  T. Kashdan,et al.  Social Anxiety and Emotion Regulation in Daily Life: Spillover Effects on Positive and Negative Social Events , 2012, Cognitive Behaviour Therapy.

[76]  James W. Pennebaker,et al.  Participation in an online mathematics community: differentiating motivations to add , 2012, CSCW.

[77]  Michael D. Slater,et al.  Alienation, Aggression, and Sensation Seeking as Predictors of Adolescent Use of Violent Film, Computer, and Website Content , 2003 .

[78]  J. Pennebaker,et al.  Pro-anorexics and recovering anorexics differ in their linguistic Internet self-presentation. , 2006, Journal of psychosomatic research.

[79]  Achim Zeileis,et al.  Applied Econometrics with R , 2008 .

[80]  Dimitrios M. Thilikos,et al.  D-cores: measuring collaboration of directed graphs based on degeneracy , 2011, Knowledge and Information Systems.

[81]  Adam D. I. Kramer,et al.  Detecting Emotional Contagion in Massive Social Networks , 2014, PloS one.

[82]  Jason B. Colditz,et al.  ASSOCIATION BETWEEN SOCIAL MEDIA USE AND DEPRESSION AMONG U.S. YOUNG ADULTS , 2016, Depression and anxiety.

[83]  Jeffrey T. Hancock,et al.  Experimental evidence of massive-scale emotional contagion through social networks , 2014, Proceedings of the National Academy of Sciences.

[84]  P. Nikken,et al.  Adolescents’ Social Network Site Use, Peer Appearance-Related Feedback, and Body Dissatisfaction: Testing a Mediation Model , 2015, Journal of Youth and Adolescence.

[85]  Markus Brede,et al.  Detecting and Characterizing Eating-Disorder Communities on Social Media , 2017, WSDM.

[86]  Miranda S. Sheeks,et al.  Shyness, Sociability, and the Use of Computer-Mediated Communication in Relationship Development , 2007, Cyberpsychology Behav. Soc. Netw..

[87]  E. Walker,et al.  Diagnostic and Statistical Manual of Mental Disorders , 2013 .

[88]  Rebecka Peebles,et al.  Surfing for Thinness: A Pilot Study of Pro–Eating Disorder Web Site Usage in Adolescents With Eating Disorders , 2006, Pediatrics.

[89]  M. Glymour,et al.  Instrumental variable estimation in a survival context. , 2015, Epidemiology.

[90]  T. Valente Network Interventions , 2012, Science.

[91]  C. Vandelanotte,et al.  Are Health Behavior Change Interventions That Use Online Social Networks Effective? A Systematic Review , 2014, Journal of medical Internet research.

[92]  Gábor Csárdi,et al.  The igraph software package for complex network research , 2006 .

[93]  Patricia Maloney ONLINE NETWORKS AND EMOTIONAL ENERGY , 2013 .

[94]  Kristine Levonyan-Radloff,et al.  Healthy Body Image Intervention Delivered to Young Women via Facebook Groups: Formative Study of Engagement and Acceptability , 2018, JMIR research protocols.

[95]  Filippo Menczer,et al.  Topicality and Impact in Social Media: Diverse Messages, Focused Messengers , 2014, PloS one.

[96]  S. Ghoshal,et al.  Social Capital, Intellectual Capital, and the Organizational Advantage , 1998 .

[97]  Bing Wu Patient Continued Use of Online Health Care Communities: Web Mining of Patient-Doctor Communication , 2018, Journal of medical Internet research.

[98]  Arvid Kappas,et al.  Sentiment in short strength detection informal text , 2010, J. Assoc. Inf. Sci. Technol..

[99]  Judit Bar-Ilan,et al.  Psychological factors behind the lack of participation in online discussions , 2016, Comput. Hum. Behav..

[100]  Munmun De Choudhury,et al.  Anorexia on Tumblr: A Characterization Study , 2015, Digital Health.

[101]  K. Merikangas,et al.  Prevalence and correlates of eating disorders in adolescents. Results from the national comorbidity survey replication adolescent supplement. , 2011, Archives of general psychiatry.