Rumor Detection with Diverse Counterfactual Evidence
Kaiwei Zhang, Junchi Yu, Haichao Shi, Jian Liang, Xiao-Yu Zhang

TL;DR
This paper introduces DCE-RD, a novel framework that uses diverse counterfactual evidence from event graphs to improve the interpretability and robustness of rumor detection on social media data.
Contribution
The paper proposes a new method that generates diverse subgraph-based counterfactual evidence and aggregates them for more interpretable and robust rumor detection.
Findings
Outperforms existing rumor detection methods on real-world datasets.
Provides interpretable insights through multi-view counterfactual evidence.
Enhances robustness by focusing on diverse propagation patterns.
Abstract
The growth in social media has exacerbated the threat of fake news to individuals and communities. This draws increasing attention to developing efficient and timely rumor detection methods. The prevailing approaches resort to graph neural networks (GNNs) to exploit the post-propagation patterns of the rumor-spreading process. However, these methods lack inherent interpretation of rumor detection due to the black-box nature of GNNs. Moreover, these methods suffer from less robust results as they employ all the propagation patterns for rumor detection. In this paper, we address the above issues with the proposed Diverse Counterfactual Evidence framework for Rumor Detection (DCE-RD). Our intuition is to exploit the diverse counterfactual evidence of an event graph to serve as multi-view interpretations, which are further aggregated for robust rumor detection results. Specifically, our…
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Taxonomy
TopicsMisinformation and Its Impacts · Complex Network Analysis Techniques · Spam and Phishing Detection
