Detection and Resolution of Rumours in Social Media

Author:

Zubiaga Arkaitz1ORCID,Aker Ahmet2,Bontcheva Kalina3,Liakata Maria4,Procter Rob4

Affiliation:

1. University of Warwick, UK

2. University of Sheffield, UK and University of Duisburg-Essen, Germany

3. University of Sheffield, UK

4. University of Warwick and Alan Turing Institute, UK

Abstract

Despite the increasing use of social media platforms for information and news gathering, its unmoderated nature often leads to the emergence and spread of rumours, i.e., items of information that are unverified at the time of posting. At the same time, the openness of social media platforms provides opportunities to study how users share and discuss rumours, and to explore how to automatically assess their veracity, using natural language processing and data mining techniques. In this article, we introduce and discuss two types of rumours that circulate on social media: long-standing rumours that circulate for long periods of time, and newly emerging rumours spawned during fast-paced events such as breaking news, where reports are released piecemeal and often with an unverified status in their early stages. We provide an overview of research into social media rumours with the ultimate goal of developing a rumour classification system that consists of four components: rumour detection, rumour tracking, rumour stance classification, and rumour veracity classification. We delve into the approaches presented in the scientific literature for the development of each of these four components. We summarise the efforts and achievements so far toward the development of rumour classification systems and conclude with suggestions for avenues for future research in social media mining for the detection and resolution of rumours.

Funder

COMRADES H2020 Project

Alan Turing Institute

PHEME FP7 Project

EPSRC Career Acceleration Fellowship

SoBigData Research Infrastructure

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

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