On the Coherence of Fake News Articles

Preprint English OPEN
Singh, Iknoor; P, Deepak; K, Anoop;
  • Subject: Computer Science - Computation and Language | Computer Science - Social and Information Networks

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 coh... View more
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