Emojis predict dropouts of remote workers: An empirical study of emoji usage on GitHub

Emotions at work have long been identified as critical signals of work motivations, status, and attitudes, and as predictors of various work-related outcomes. When more and more employees work remotely, these emotional signals of workers become harder to observe through daily, face-to-face communications. The use of online platforms to communicate and collaborate at work provides an alternative channel to monitor the emotions of workers. This paper studies how emojis, as non-verbal cues in online communications, can be used for such purposes and how the emotional signals in emoji usage can be used to predict future behavior of workers. In particular, we present how the developers on GitHub use emojis in their work-related activities. We show that developers have diverse patterns of emoji usage, which can be related to their working status including activity levels, types of work, types of communications, time management, and other behavioral patterns. Developers who use emojis in their posts are significantly less likely to dropout from the online work platform. Surprisingly, solely using emoji usage as features, standard machine learning models can predict future dropouts of developers at a satisfactory accuracy. Features related to the general use and the emotions of emojis appear to be important factors, while they do not rule out paths through other purposes of emoji use.

[1]  Chih-Fong Tsai,et al.  Customer churn prediction by hybrid neural networks , 2009, Expert Syst. Appl..

[2]  S. Hewitt,et al.  2008 , 2018, Los 25 años de la OMC: Una retrospectiva fotográfica.

[3]  Robert I. Sutton,et al.  Employee Positive Emotion and Favorable Outcomes at the Workplace , 1994 .

[4]  Marco Aurélio Gerosa,et al.  Why do developers take breaks from contributing to OSS projects? A preliminary analysis , 2019, SoHeal@ICSE.

[5]  Loren G. Terveen,et al.  Understanding Emoji Ambiguity in Context: The Role of Text in Emoji-Related Miscommunication , 2017, ICWSM.

[6]  M. Varacallo,et al.  2019 , 2019, Journal of Surgical Orthopaedic Advances.

[7]  J. Teresi,et al.  Occurrences and sources of Differential Item Functioning (DIF) in patient-reported outcome measures: Description of DIF methods, and review of measures of depression, quality of life and general health. , 2008, Psychology science quarterly.

[8]  A. Pentland,et al.  Can an Emoji a Day Keep the Doctor Away? An Explorative Mixed-Methods Feasibility Study to Develop a Self-Help App for Youth With Mental Health Problems , 2019, Front. Psychiatry.

[9]  Jacques Forest,et al.  Passion at work and burnout: A two-study test of the mediating role of flow experiences , 2012 .

[10]  Ning Wang,et al.  Learning from the ubiquitous language: an empirical analysis of emoji usage of smartphone users , 2016, UbiComp.

[11]  T. Kashdan,et al.  Affective outcomes in superficial and intimate interactions: Roles of social anxiety and curiosity , 2006 .

[12]  Wilmar B Schaufeli,et al.  Good morning, good day: A diary study on positive emotions, hope, and work engagement , 2012 .

[13]  Seth A. Kaplan,et al.  The affective underpinnings of job perceptions and attitudes: a meta-analytic review and integration. , 2003, Psychological bulletin.

[14]  Ryan L. Boyd,et al.  The Development and Psychometric Properties of LIWC2015 , 2015 .

[15]  David Lo,et al.  A Large Scale Study of Long-Time Contributor Prediction for GitHub Projects , 2021, IEEE Transactions on Software Engineering.

[16]  Hillary Anger Elfenbein,et al.  7 Emotion in Organizations: A Review and Theoretical Integration , 2007 .

[17]  Trevor Hastie,et al.  An Introduction to Statistical Learning , 2013, Springer Texts in Statistics.

[18]  Girish Keshav Palshikar,et al.  Employee churn prediction , 2011, Expert Syst. Appl..

[19]  A. Azzouz 2011 , 2020, City.

[20]  Dong Liu,et al.  From autonomy to creativity: a multilevel investigation of the mediating role of harmonious passion. , 2011, The Journal of applied psychology.

[21]  Jacob Weisberg,et al.  Measuring Workers′ Burnout and Intention to Leave , 1994 .

[22]  Robert Gould,et al.  A Modern Approach to Regression with R , 2010 .

[23]  F. Giannotta,et al.  “Development and preliminary validation of an image-based instrument to assess depressive symptoms” , 2019, Psychiatry Research.

[24]  L. F. Barrett,et al.  THE ROLE OF AFFECTIVE EXPERIENCE IN WORK MOTIVATION. , 2004, Academy of management review. Academy of Management.

[25]  E. Kang,et al.  Impact of depression on work productivity and its improvement after outpatient treatment with antidepressants. , 2011, Value in health : the journal of the International Society for Pharmacoeconomics and Outcomes Research.

[26]  Pascale Carayon,et al.  Work Organization, Job Stress, and Work-Related Musculoskeletal Disorders , 1999, Hum. Factors.

[27]  David Donovan Mood, emotions and emojis: conversations about health with young people , 2016 .

[28]  Paul E. Tesluk,et al.  Emotional intelligence, teamwork effectiveness, and job performance: the moderating role of job context. , 2012, The Journal of applied psychology.

[29]  Qiaozhu Mei,et al.  Decoding the New World Language: Analyzing the Popularity, Roles, and Utility of Emojis , 2019, WWW.

[30]  R. Blundell,et al.  Extensive and Intensive Margins of Labour Supply: Work and Working Hours in the US, the UK and France* , 2013 .

[31]  F. Giannotta,et al.  Assessing personality using emoji: An exploratory study , 2017 .

[32]  Wilmar B. Schaufeli,et al.  The Burnout Companion to Study and Practice: A Critical Analysis , 1998 .

[33]  S. Oswalt,et al.  Comparing Mental Health Issues Among Undergraduate and Graduate Students , 2013 .

[34]  Rui Wang,et al.  Tracking Depression Dynamics in College Students Using Mobile Phone and Wearable Sensing , 2018, Proc. ACM Interact. Mob. Wearable Ubiquitous Technol..

[35]  Haoyu Wang,et al.  Slack Channels Ecology in Enterprises: How Employees Collaborate Through Group Chat , 2019, ArXiv.

[36]  Jing Ge,et al.  Emoji Sequence Use in Enacting Personal Identity , 2019, WWW.

[37]  Sven Laumer,et al.  Who Will Remain? An Evaluation of Actual Person-Job and Person-Team Fit to Predict Developer Retention in FLOSS Projects , 2012, 2012 45th Hawaii International Conference on System Sciences.

[38]  Margaret L. Kern,et al.  Social Networking Sites, Depression, and Anxiety: A Systematic Review , 2016, JMIR mental health.

[39]  Gaël Varoquaux,et al.  Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..

[40]  Habib Fardoun,et al.  Early dropout prediction using data mining: a case study with high school students , 2016, Expert Syst. J. Knowl. Eng..

[41]  A. Grandey Emotions at work: A review and research agenda , 2008 .

[42]  Eli J. Finkel,et al.  The Social Life of Emotions: Does Expressing Emotion Promote Well-Being? It Depends on Relationship Context , 2004 .

[43]  Davide Marengo,et al.  Sharing feelings online: studying emotional well-being via automated text analysis of Facebook posts , 2015, Front. Psychol..

[44]  Geneviève A. Mageau,et al.  Les passions de l'ame: on obsessive and harmonious passion. , 2003, Journal of personality and social psychology.

[45]  Hiroyuki Ohsaki,et al.  Recognizing Depression from Twitter Activity , 2015, CHI.

[46]  Jiawei Han,et al.  I Know You'll Be Back: Interpretable New User Clustering and Churn Prediction on a Mobile Social Application , 2018, KDD.

[47]  Wanli Xing,et al.  Dropout Prediction in MOOCs: Using Deep Learning for Personalized Intervention , 2019 .

[48]  Alina Bakhitova,et al.  Analysis of Newcomers Activity in Communicative Posts on GitHub , 2019 .

[49]  Relations among social support, burnout, and experiences of anger: an investigation among emergency nurses. , 2009, Nursing forum.