Emulating Reader Behaviors for Fake News Detection
Junwei Yin, Min Gao, Kai Shu, Zehua Zhao, Yinqiu Huang, Jia Wang

TL;DR
This paper introduces Ember, a fake news detection method that models reader behaviors during news consumption, considering the component-by-component reading process to improve detection accuracy.
Contribution
It proposes a novel approach that emulates reader behaviors and the component verification process, capturing detailed interactions for enhanced fake news detection.
Findings
Outperforms existing methods on nine real-world datasets.
Effectively models the reading and verification sequence.
Handles multi-component news with high accuracy.
Abstract
The wide dissemination of fake news has affected our lives in many aspects, making fake news detection important and attracting increasing attention. Existing approaches make substantial contributions in this field by modeling news from a single-modal or multi-modal perspective. However, these modal-based methods can result in sub-optimal outcomes as they ignore reader behaviors in news consumption and authenticity verification. For instance, they haven't taken into consideration the component-by-component reading process: from the headline, images, comments, to the body, which is essential for modeling news with more granularity. To this end, we propose an approach of Emulating the behaviors of readers (Ember) for fake news detection on social media, incorporating readers' reading and verificating process to model news from the component perspective thoroughly. Specifically, we first…
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Taxonomy
TopicsMisinformation and Its Impacts · Spam and Phishing Detection · Advanced Malware Detection Techniques
