Discourse-Aware Rumour Stance Classification in Social Media Using Sequential Classifiers

12/06/2017
by   Arkaitz Zubiaga, et al.
0

Rumour stance classification, defined as classifying the stance of specific social media posts into one of supporting, denying, querying or commenting on an earlier post, is becoming of increasing interest to researchers. While most previous work has focused on using individual tweets as classifier inputs, here we report on the performance of sequential classifiers that exploit the discourse features inherent in social media interactions or 'conversational threads'. Testing the effectiveness of four sequential classifiers -- Hawkes Processes, Linear-Chain Conditional Random Fields (Linear CRF), Tree-Structured Conditional Random Fields (Tree CRF) and Long Short Term Memory networks (LSTM) -- on eight datasets associated with breaking news stories, and looking at different types of local and contextual features, our work sheds new light on the development of accurate stance classifiers. We show that sequential classifiers that exploit the use of discourse properties in social media conversations while using only local features, outperform non-sequential classifiers. Furthermore, we show that LSTM using a reduced set of features can outperform the other sequential classifiers; this performance is consistent across datasets and across types of stances. To conclude, our work also analyses the different features under study, identifying those that best help characterise and distinguish between stances, such as supporting tweets being more likely to be accompanied by evidence than denying tweets. We also set forth a number of directions for future research.

READ FULL TEXT
research
09/07/2016

Using Gaussian Processes for Rumour Stance Classification in Social Media

Social media tend to be rife with rumours while new reports are released...
research
10/24/2016

Learning Reporting Dynamics during Breaking News for Rumour Detection in Social Media

Breaking news leads to situations of fast-paced reporting in social medi...
research
06/10/2019

Modeling Noisiness to Recognize Named Entities using Multitask Neural Networks on Social Media

Recognizing named entities in a document is a key task in many NLP appli...
research
01/07/2019

Stance Classification for Rumour Analysis in Twitter: Exploiting Affective Information and Conversation Structure

Analysing how people react to rumours associated with news in social med...
research
09/15/2017

Are you serious?: Rhetorical Questions and Sarcasm in Social Media Dialog

Effective models of social dialog must understand a broad range of rheto...
research
10/23/2017

Deep Health Care Text Classification

Health related social media mining is a valuable apparatus for the early...
research
11/08/2016

Contradiction Detection for Rumorous Claims

The utilization of social media material in journalistic workflows is in...

Please sign up or login with your details

Forgot password? Click here to reset