Causality-based Social Media Analysis for Normal Users Credibility Assessment in a Political Crisis

Information trustworthiness assessment on political social media discussions is crucial to maintain the order of society, especially during emergent situations. The polarity nature of political topics and the echo chamber effect by social media platforms allow for a deceptive and a dividing environment. During a political crisis, a vast amount of information is being propagated on social media, that leads up to a high level of polarization and deception by the beneficial parties. The traditional approaches to tackling misinformation on social media usually lack a comprehensive problem definition due to its complication. This paper proposes a probabilistic graphical model as a theoretical view on the problem of normal users credibility on social media during a political crisis, where polarization and deception are keys properties. Such noisy signals dramatically influence any attempts for misinformation detection. Hence, we introduce a causal Bayesian network, inspired by the potential main entities that would be part of the process dynamics. Our methodology examines the problem solution in a causal manner which considers the task of misinformation detection as a question of cause and effect rather than just a classification task. Our causality-based approach provides a practical road map for some sub-problems in real-world scenarios such as individual polarization level, misinformation detection, and sensitivity analysis of the problem. Moreover, it facilitates intervention simulations which would unveil both positive and negative effects on the deception level over the network.

[1]  M. Gentzkow,et al.  Social Media and Fake News in the 2016 Election , 2017 .

[2]  Eugenio Tacchini,et al.  Some Like it Hoax: Automated Fake News Detection in Social Networks , 2017, ArXiv.

[3]  Matthias Hagen,et al.  The Clickbait Challenge 2017: Towards a Regression Model for Clickbait Strength , 2018, ArXiv.

[4]  P. Bordia,et al.  Rumor, Gossip and Urban Legends , 2007 .

[5]  Christian Reuter,et al.  Retrospective Review and Future Directions for Crisis Informatics , 2021, Information Refinement Technologies for Crisis Informatics.

[6]  Anupam Joshi,et al.  Faking Sandy: characterizing and identifying fake images on Twitter during Hurricane Sandy , 2013, WWW.

[7]  Sushil Jajodia,et al.  Detecting Automation of Twitter Accounts: Are You a Human, Bot, or Cyborg? , 2012, IEEE Transactions on Dependable and Secure Computing.

[8]  Mai ElSherief,et al.  Hate Lingo: A Target-based Linguistic Analysis of Hate Speech in Social Media , 2018, ICWSM.

[9]  LiakataMaria,et al.  Detection and Resolution of Rumours in Social Media , 2018 .

[10]  Mohand Boughanem,et al.  Uncovering Like-minded Political Communities on Twitter , 2017, ICTIR.

[11]  Barbara Poblete,et al.  Twitter under crisis: can we trust what we RT? , 2010, SOMA '10.

[12]  Tim Weninger,et al.  Discriminative predicate path mining for fact checking in knowledge graphs , 2015, Knowl. Based Syst..

[13]  Aristides Gionis,et al.  Tell me something my friends do not know: diversity maximization in social networks , 2018, Knowledge and Information Systems.

[14]  Michael S. Bernstein,et al.  Anyone Can Become a Troll: Causes of Trolling Behavior in Online Discussions , 2017, CSCW.

[15]  Wei Li,et al.  Multi-resolution community detection in massive networks , 2016, Scientific Reports.

[16]  A. Arvidsson,et al.  Echo Chamber or Public Sphere? Predicting Political Orientation and Measuring Political Homophily in Twitter Using Big Data , 2014 .

[17]  Emilio Ferrara,et al.  Social Bots Distort the 2016 US Presidential Election Online Discussion , 2016, First Monday.

[18]  Michael Luby,et al.  Approximating Probabilistic Inference in Bayesian Belief Networks is NP-Hard , 1993, Artif. Intell..

[19]  Walter Quattrociocchi,et al.  Echo Chambers on Facebook , 2016 .

[20]  William H. Hsu,et al.  A Survey of Algorithms for Real-Time Bayesian Network Inference , 2002 .

[21]  Suhang Wang,et al.  Fake News Detection on Social Media: A Data Mining Perspective , 2017, SKDD.

[22]  W. Zachary,et al.  An Information Flow Model for Conflict and Fission in Small Groups , 1977, Journal of Anthropological Research.

[23]  Jinquan Zeng,et al.  Rumor Identification in Microblogging Systems Based on Users’ Behavior , 2015, IEEE Transactions on Computational Social Systems.

[24]  Franz J. Neyer,et al.  A Gentle Introduction to Bayesian Analysis: Applications to Developmental Research , 2013, Child development.

[25]  Virgílio A. F. Almeida,et al.  "Everything I Disagree With is #FakeNews": Correlating Political Polarization and Spread of Misinformation , 2017, ArXiv.

[26]  Enrique Herrera-Viedma,et al.  An incremental method to detect communities in dynamic evolving social networks , 2019, Knowl. Based Syst..

[27]  Yongdong Zhang,et al.  News Verification by Exploiting Conflicting Social Viewpoints in Microblogs , 2016, AAAI.

[28]  Jose J. Gonzalez,et al.  A spatio-temporal probabilistic model of hazard- and crowd dynamics for evacuation planning in disasters , 2014, Applied Intelligence.

[29]  Christopher Paul,et al.  The Russian "Firehose of Falsehood" Propaganda Model: Why It Might Work and Options to Counter It , 2016 .

[30]  Philip N. Howard,et al.  Chinese computational propaganda: automation, algorithms and the manipulation of information about Chinese politics on Twitter and Weibo , 2019 .

[31]  Changhe Yuan,et al.  Importance sampling algorithms for Bayesian networks: Principles and performance , 2006, Math. Comput. Model..

[32]  Judea Pearl,et al.  Theoretical Impediments to Machine Learning With Seven Sparks from the Causal Revolution , 2018, WSDM.

[33]  William Marsh,et al.  From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support , 2016, Artif. Intell. Medicine.

[34]  Gregory F. Cooper,et al.  The Computational Complexity of Probabilistic Inference Using Bayesian Belief Networks , 1990, Artif. Intell..

[35]  Yongdong Zhang,et al.  News Credibility Evaluation on Microblog with a Hierarchical Propagation Model , 2014, 2014 IEEE International Conference on Data Mining.

[36]  M. Steller RECENT DEVELOPMENTS IN STATEMENT ANALYSIS , 1989 .

[37]  William Yang Wang “Liar, Liar Pants on Fire”: A New Benchmark Dataset for Fake News Detection , 2017, ACL.

[38]  Ole-Christoffer Granmo,et al.  A Bayesian network based solution scheme for the constrained Stochastic On-line Equi-Partitioning Problem , 2017, Applied Intelligence.

[39]  Thomas Renault,et al.  Market Manipulation and Suspicious Stock Recommendations on Social Media , 2017 .

[40]  Andreas Vlachos,et al.  Fact Checking: Task definition and dataset construction , 2014, LTCSS@ACL.