Computation (Feb 2021)

Deep Learning for Fake News Detection in a Pairwise Textual Input Schema

  • Despoina Mouratidis,
  • Maria Nefeli Nikiforos,
  • Katia Lida Kermanidis

DOI
https://doi.org/10.3390/computation9020020
Journal volume & issue
Vol. 9, no. 2
p. 20

Abstract

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In the past decade, the rapid spread of large volumes of online information among an increasing number of social network users is observed. It is a phenomenon that has often been exploited by malicious users and entities, which forge, distribute, and reproduce fake news and propaganda. In this paper, we present a novel approach to the automatic detection of fake news on Twitter that involves (a) pairwise text input, (b) a novel deep neural network learning architecture that allows for flexible input fusion at various network layers, and (c) various input modes, like word embeddings and both linguistic and network account features. Furthermore, tweets are innovatively separated into news headers and news text, and an extensive experimental setup performs classification tests using both. Our main results show high overall accuracy performance in fake news detection. The proposed deep learning architecture outperforms the state-of-the-art classifiers, while using fewer features and embeddings from the tweet text.

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