Abstract

Increasing amounts of freely available data both in textual and relational form offers exploration of richer document representations, potentially improving the model performance and robustness. An emerging problem in the modern era is fake news detection—many easily available pieces of information are not necessarily factually correct, and can lead to wrong conclusions or are used for manipulation. In this work we explore how different document representations, ranging from simple symbolic bag-of-words, to contextual, neural language model-based ones can be used for efficient fake news identification. One of the key contributions is a set of novel document representation learning methods based solely on knowledge graphs, i.e., extensive collections of (grounded) subject-predicate-object triplets. We demonstrate that knowledge graph-based representations already achieve competitive performance to conventionally accepted representation learners. Furthermore, when combined with existing, contextual representations, knowledge graph-based document representations can achieve state-of-the-art performance. To our knowledge this is the first larger-scale evaluation of how knowledge graph-based representations can be systematically incorporated into the process of fake news classification.

Highlights

  • Identifying fake news is a crucial task in the modern era

  • The main contributions of this work, which significantly extend our conference paper [7] are: 1. We explore how additional background knowledge in the form of knowledge graphs, constructed from freely available knowledge bases can be exploited to enrich various contextual and non-contextual document representations

  • For the text-based representations we focused on exploring and exploiting the methods we already developed in our submission to the COVID-19 fake news detection task [7]

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Summary

Introduction

Identifying fake news is a crucial task in the modern era. Fake news can have devastating implications on society; the uncontrolled spread of fake news can for example impact the idea of democracy, with the ability to alter the course of elections by targeted information spreading [1]. In the times of a global pandemic they can endanger the global health, for example by reporting that using bleach can stop the spread of Coronavirus [2, 3], or that vaccines are problematic for human health. With the upbringings of the development of the information society, the increasing capability to create and spread news in various formats makes the detection of problematic news even harder. The need for automated detection of fake news is more important than ever, making it a very relevant and attractive research task

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