Analyzing Microblogging Posts for Tracking Collective Emotional Trajectories

The technologies of communication, such as forums and instant messaging, available in the social media platforms open to the possibility to convey and express emotions and feelings, besides to facilitate interaction. Emotions and social relationships are often connected, indeed, emotions and feelings can make the users favorable or reluctant to socialize, as well, experiences of socialization can influence the behaviors. Being personal, emotions and feelings can be crucial in the dynamics of social communities, perhaps more than other elements, such as events and multimedia items, because the individuals tend to interact with the users with who have particular affinity or with who share sensations. In this paper we introduce the problem of tracking users who share emotional behavior with other users. The proposed method relies on a cyberspace based on emotional words extracted from social media posts. It builds emotional trajectories as sequences of points of the cyberspace characterized by highly similar emotions. We show the viability of the method on Twitter data and provide a quantitative evaluation and qualitative considerations.

[1]  Enhong Chen,et al.  Tracking the Evolution of Social Emotions: A Time-Aware Topic Modeling Perspective , 2014, 2014 IEEE International Conference on Data Mining.

[2]  Roberto Basili,et al.  User Mood Tracking for Opinion Analysis on Twitter , 2016, AI*IA.

[3]  P. Rousseeuw Silhouettes: a graphical aid to the interpretation and validation of cluster analysis , 1987 .

[4]  Stefan Rank,et al.  Modelling Emotional Trajectories of Individuals in an Online Chat , 2012, MATES.

[5]  Annie Lang,et al.  Dynamic motivated processing of emotional trajectories in public service announcements , 2016 .

[6]  Younghoon Kim,et al.  TOPTRAC: Topical Trajectory Pattern Mining , 2015, KDD.

[7]  Sisi Liu,et al.  Discovering sentiment sequence within email data through trajectory representation , 2018, Expert Syst. Appl..

[8]  Chengzhi Zhang,et al.  Emotion evolutions of sub-topics about popular events on microblogs , 2017, Electron. Libr..

[9]  Kristina Lerman,et al.  Emotions, Demographics and Sociability in Twitter Interactions , 2015, ICWSM.

[10]  Luca Dini,et al.  Emotion Analysis on Twitter: The Hidden Challenge , 2016, LREC.

[11]  Corrado Loglisci,et al.  Time-based discovery in biomedical literature: mining temporal links , 2013, Int. J. Data Anal. Tech. Strateg..

[12]  Jon Rokne,et al.  Emotion detection from text and speech: a survey , 2018, Social Network Analysis and Mining.

[13]  Corrado Loglisci,et al.  Mining Periodic Changes in Complex Dynamic Data Through Relational Pattern Discovery , 2015, NFMCP.

[14]  P. Ekman Facial expression and emotion. , 1993, The American psychologist.

[15]  Martin D. Sykora,et al.  What about Mood Swings: Identifying Depression on Twitter with Temporal Measures of Emotions , 2018, WWW.

[16]  Maguelonne Teisseire,et al.  Toward Geographic Information Harvesting: Extraction of Spatial Relational Facts from Web Documents , 2012, 2012 IEEE 12th International Conference on Data Mining Workshops.

[17]  Shivakant Mishra,et al.  Studying the attributes of users in Twitter considering their emotional states , 2015, Social Network Analysis and Mining.

[18]  Jae-Gil Lee,et al.  Trajectory clustering: a partition-and-group framework , 2007, SIGMOD '07.

[19]  Carlo Strapparava,et al.  WordNet Affect: an Affective Extension of WordNet , 2004, LREC.

[20]  Corrado Loglisci Using interactions and dynamics for mining groups of moving objects from trajectory data , 2018, Int. J. Geogr. Inf. Sci..

[21]  Corrado Loglisci,et al.  Leveraging temporal autocorrelation of historical data for improving accuracy in network regression , 2017, Stat. Anal. Data Min..

[22]  Hong Chen,et al.  What Causes Different Emotion Distributions of a Hot Event? A Deep Event-Emotion Analysis System on Microblogs , 2015, NLPCC.

[23]  F. Schweitzer,et al.  Emotional persistence in online chatting communities , 2012, Scientific Reports.

[24]  Maguelonne Teisseire,et al.  An Unsupervised Framework for Topological Relations Extraction from Geographic Documents , 2012, DEXA.