Joint Inference on Truth/Rumor and Their Sources in Social Networks

In the contemporary era of information explosion, we are often faced with the mixture of massive truth (true information) and rumor (false information) flooded over social networks. Under such circumstances, it is very essential to infer whether each claim (e.g., news, messages) is a truth or a rumor, and identify their sources, i.e., the users who initially spread those claims. While most prior arts have been dedicated to the two tasks respectively, this paper aims to offer the joint inference on truth/rumor and their sources. Our insight is that a joint inference can enhance the mutual performance on both sides.To this end, we propose a framework named SourceCR, which alternates between two modules, i.e., credibility-reliability training for truth/rumor inference and division-querying for source detection, in an iterative manner. To elaborate, the former module performs a simultaneous estimation of claim credibility and user reliability by virtue of an Expectation Maximization algorithm, which takes the source reliability outputted from the latter module as the initial input. Meanwhile, the latter module divides the network into two different subnetworks labeled via the claim credibility, and in each subnetwork launches source detection by applying querying of theoretical budget guarantee to the users selected via the estimated reliability from the former module. The proposed SourceCR is provably convergent, and algorithmic implementable with reasonable computational complexity. We empirically validate the effectiveness of the proposed framework in both synthetic and real datasets, where the joint inference leads to an up to 35% accuracy of credibility gain and 29% source detection rate gain compared with the separate counterparts.

[1]  Kyomin Jung,et al.  Prominent Features of Rumor Propagation in Online Social Media , 2013, 2013 IEEE 13th International Conference on Data Mining.

[2]  Sungyong Seo,et al.  CSI: A Hybrid Deep Model for Fake News Detection , 2017, CIKM.

[3]  Jaeyoung Choi,et al.  Information source localization with protector diffusion in networks , 2019, Journal of Communications and Networks.

[4]  Jaeyoung Choi,et al.  Rumor source detection under querying with untruthful answers , 2017, IEEE INFOCOM 2017 - IEEE Conference on Computer Communications.

[5]  Sinan Aral,et al.  The spread of true and false news online , 2018, Science.

[6]  Sujay Sanghavi,et al.  Learning the graph of epidemic cascades , 2012, SIGMETRICS '12.

[7]  Charles A. Sutton,et al.  GEMSEC: Graph Embedding with Self Clustering , 2018, 2019 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM).

[8]  Kenny Q. Zhu,et al.  False rumors detection on Sina Weibo by propagation structures , 2015, 2015 IEEE 31st International Conference on Data Engineering.

[9]  Jaeyoung Choi,et al.  Necessary and Sufficient Budgets in Information Source Finding with Querying: Adaptivity Gap , 2018, 2018 IEEE International Symposium on Information Theory (ISIT).

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

[11]  Manuela M. Veloso,et al.  ClaimEval: Integrated and Flexible Framework for Claim Evaluation Using Credibility of Sources , 2016, AAAI.

[12]  Chao Wu,et al.  Information Credibility on Twitter in Emergency Situation , 2012, PAISI.

[13]  Wei Gao,et al.  Detect Rumors Using Time Series of Social Context Information on Microblogging Websites , 2015, CIKM.

[14]  New York Dover,et al.  ON THE CONVERGENCE PROPERTIES OF THE EM ALGORITHM , 1983 .

[15]  Kate Starbird,et al.  Rumors, False Flags, and Digital Vigilantes: Misinformation on Twitter after the 2013 Boston Marathon Bombing , 2014 .

[16]  Fan Yang,et al.  Automatic detection of rumor on Sina Weibo , 2012, MDS '12.

[17]  Andreas Vlachos,et al.  Emergent: a novel data-set for stance classification , 2016, NAACL.

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

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

[20]  Gerhard Weikum,et al.  Where the Truth Lies: Explaining the Credibility of Emerging Claims on the Web and Social Media , 2017, WWW.

[21]  Devavrat Shah,et al.  Rumors in a Network: Who's the Culprit? , 2009, IEEE Transactions on Information Theory.

[22]  Preslav Nakov,et al.  Automatic Stance Detection Using End-to-End Memory Networks , 2018, NAACL.

[23]  Tarek F. Abdelzaher,et al.  On truth discovery in social sensing: A maximum likelihood estimation approach , 2012, International Symposium on Information Processing in Sensor Networks.

[24]  Enhong Chen,et al.  Information Source Detection via Maximum A Posteriori Estimation , 2015, 2015 IEEE International Conference on Data Mining.

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

[26]  Evaggelia Pitoura,et al.  On Measuring Bias in Online Information , 2017, SGMD.

[27]  Matthew Lease,et al.  Believe it or not: Designing a Human-AI Partnership for Mixed-Initiative Fact-Checking , 2018, UIST.

[28]  Philip S. Yu,et al.  Truth Discovery with Multiple Conflicting Information Providers on the Web , 2007, IEEE Transactions on Knowledge and Data Engineering.

[29]  Justin Cheng,et al.  Rumor Cascades , 2014, ICWSM.

[30]  Charu C. Aggarwal,et al.  Using humans as sensors: An estimation-theoretic perspective , 2014, IPSN-14 Proceedings of the 13th International Symposium on Information Processing in Sensor Networks.

[31]  Po-Ling Loh,et al.  Confidence Sets for the Source of a Diffusion in Regular Trees , 2015, IEEE Transactions on Network Science and Engineering.

[32]  Matthew Lease,et al.  An Interpretable Joint Graphical Model for Fact-Checking From Crowds , 2018, AAAI.

[33]  Zheng Wang,et al.  Multiple Source Detection without Knowing the Underlying Propagation Model , 2017, AAAI.

[34]  Bo Zhao,et al.  A Survey on Truth Discovery , 2015, SKDD.

[35]  H. Russell Bernard,et al.  Studying Fake News via Network Analysis: Detection and Mitigation , 2018, Lecture Notes in Social Networks.