RumorSleuth: Joint Detection of Rumor Veracity and User Stance

The penetration of social media has had deep and far-reaching consequences in information production and consumption. Widespread use of social media platforms has engendered malicious users and attention seekers to spread rumors and fake news. This trend is particularly evident in various microblogging platforms where news becomes viral in a matter of hours and can lead to mass panic and confusion. One intriguing fact regarding rumors and fake news is that very often rumor stories prompt users to adopt different stances about the rumor posts. Understanding user stances in rumor posts is thus very important to identify the veracity of the underlying content. While rumor veracity and stance detection have been viewed as disjoint tasks we demonstrate here how jointly learning both of them can be fruitful. In this paper, we propose RumorSleuth, a multitask deep learning model which can leverage both the textual information and user profile information to jointly identify the veracity of a rumor along with users' stances. Tests on two publicly available rumor datasets demonstrate that RumorSleuth outperforms current state-of-the-art models and achieves up to 14% performance gain in rumor veracity classification and around 6% improvement in user stance classification.

[1]  Michael A. Kamins,et al.  Consumer Responses to Rumors: Good News, Bad News , 1997 .

[2]  Dragomir R. Radev,et al.  Rumor has it: Identifying Misinformation in Microblogs , 2011, EMNLP.

[3]  Divyakant Agrawal,et al.  Limiting the spread of misinformation in social networks , 2011, WWW.

[4]  R. L. Rosnow Inside rumor: A personal journey. , 1991 .

[5]  M. Cha,et al.  Rumor Detection over Varying Time Windows , 2017, PloS one.

[6]  Qiaozhu Mei,et al.  Enquiring Minds: Early Detection of Rumors in Social Media from Enquiry Posts , 2015, WWW.

[7]  Wei Gao,et al.  Detect Rumor and Stance Jointly by Neural Multi-task Learning , 2018, WWW.

[8]  Arkaitz Zubiaga,et al.  Hawkes Processes for Continuous Time Sequence Classification: an Application to Rumour Stance Classification in Twitter , 2016, ACL.

[9]  Xuanjing Huang,et al.  Recurrent Neural Network for Text Classification with Multi-Task Learning , 2016, IJCAI.

[10]  Samy Bengio,et al.  Generating Sentences from a Continuous Space , 2015, CoNLL.

[11]  Xiaomo Liu,et al.  Real-time Rumor Debunking on Twitter , 2015, CIKM.

[12]  Arkaitz Zubiaga,et al.  Analysing How People Orient to and Spread Rumours in Social Media by Looking at Conversational Threads , 2015, PloS one.

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

[14]  Lun-Wei Ku,et al.  UTCNN: a Deep Learning Model of Stance Classification on Social Media Text , 2016, COLING.

[15]  Vincenzo Auletta,et al.  Contrasting the Spread of Misinformation in Online Social Networks , 2017, AAMAS.

[16]  James She,et al.  Collaborative Variational Autoencoder for Recommender Systems , 2017, KDD.

[17]  Yongdong Zhang,et al.  Multimodal Fusion with Recurrent Neural Networks for Rumor Detection on Microblogs , 2017, ACM Multimedia.

[18]  Vincent Ng,et al.  Stance Classification of Ideological Debates: Data, Models, Features, and Constraints , 2013, IJCNLP.

[19]  Max Welling,et al.  Auto-Encoding Variational Bayes , 2013, ICLR.

[20]  Arkaitz Zubiaga,et al.  All-in-one: Multi-task Learning for Rumour Verification , 2018, COLING.

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

[22]  Wei Gao,et al.  Detecting Rumors from Microblogs with Recurrent Neural Networks , 2016, IJCAI.

[23]  Prashant Bordia,et al.  Rumors Influence: Toward a Dynamic Social Impact Theory of Rumor , 2007 .

[24]  Ruifeng Xu,et al.  Stance Classification with Target-specific Neural Attention , 2017, IJCAI.

[25]  Alex Graves,et al.  DRAW: A Recurrent Neural Network For Image Generation , 2015, ICML.

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

[27]  Quoc V. Le,et al.  Distributed Representations of Sentences and Documents , 2014, ICML.

[28]  Barbara Poblete,et al.  Information credibility on twitter , 2011, WWW.