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Two Stage Transformer Model for COVID-19 Fake News Detection and Fact Checking (2011.13253v1)

Published 26 Nov 2020 in cs.CL, cs.IR, and cs.LG

Abstract: The rapid advancement of technology in online communication via social media platforms has led to a prolific rise in the spread of misinformation and fake news. Fake news is especially rampant in the current COVID-19 pandemic, leading to people believing in false and potentially harmful claims and stories. Detecting fake news quickly can alleviate the spread of panic, chaos and potential health hazards. We developed a two stage automated pipeline for COVID-19 fake news detection using state of the art machine learning models for natural language processing. The first model leverages a novel fact checking algorithm that retrieves the most relevant facts concerning user claims about particular COVID-19 claims. The second model verifies the level of truth in the claim by computing the textual entailment between the claim and the true facts retrieved from a manually curated COVID-19 dataset. The dataset is based on a publicly available knowledge source consisting of more than 5000 COVID-19 false claims and verified explanations, a subset of which was internally annotated and cross-validated to train and evaluate our models. We evaluate a series of models based on classical text-based features to more contextual Transformer based models and observe that a model pipeline based on BERT and ALBERT for the two stages respectively yields the best results.

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Authors (4)
  1. Rutvik Vijjali (1 paper)
  2. Prathyush Potluri (2 papers)
  3. Siddharth Kumar (16 papers)
  4. Sundeep Teki (4 papers)
Citations (70)