SICLJun 26, 2019

On the Coherence of Fake News Articles

arXiv:1906.11126v212 citations
Originality Synthesis-oriented
AI Analysis

This addresses the problem of detecting fake news for media analysts and researchers, but it is incremental as it builds on existing methods.

The study analyzed textual coherence differences between fake and legitimate news articles using computational methods, finding that fake news consistently scored lower on coherence compared to legitimate ones.

The generation and spread of fake news within new and online media sources is emerging as a phenomenon of high societal significance. Combating them using data-driven analytics has been attracting much recent scholarly interest. In this study, we analyze the textual coherence of fake news articles vis-a-vis legitimate ones. We develop three computational formulations of textual coherence drawing upon the state-of-the-art methods in natural language processing and data science. Two real-world datasets from widely different domains which have fake/legitimate article labellings are then analyzed with respect to textual coherence. We observe apparent differences in textual coherence across fake and legitimate news articles, with fake news articles consistently scoring lower on coherence as compared to legitimate news ones. While the relative coherence shortfall of fake news articles as compared to legitimate ones form the main observation from our study, we analyze several aspects of the differences and outline potential avenues of further inquiry.

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