CLSIApr 26, 2019

Fake News Early Detection: An Interdisciplinary Study

arXiv:1904.11679v2224 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of fake news detection for social media platforms and news outlets when propagation data is unavailable, though it is incremental as it builds on existing content-based methods.

The paper tackles the problem of detecting fake news at an early stage before it spreads on social media by proposing a theory-driven model that analyzes news content at multiple levels, achieving state-of-the-art performance on two real-world datasets.

Massive dissemination of fake news and its potential to erode democracy has increased the demand for accurate fake news detection. Recent advancements in this area have proposed novel techniques that aim to detect fake news by exploring how it propagates on social networks. Nevertheless, to detect fake news at an early stage, i.e., when it is published on a news outlet but not yet spread on social media, one cannot rely on news propagation information as it does not exist. Hence, there is a strong need to develop approaches that can detect fake news by focusing on news content. In this paper, a theory-driven model is proposed for fake news detection. The method investigates news content at various levels: lexicon-level, syntax-level, semantic-level and discourse-level. We represent news at each level, relying on well-established theories in social and forensic psychology. Fake news detection is then conducted within a supervised machine learning framework. As an interdisciplinary research, our work explores potential fake news patterns, enhances the interpretability in fake news feature engineering, and studies the relationships among fake news, deception/disinformation, and clickbaits. Experiments conducted on two real-world datasets indicate the proposed method can outperform the state-of-the-art and enable fake news early detection when there is limited content information.

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