An Information-theoretic Propagation Denoising and Fusion Framework for Fake News Detection
Mengyang Chen, Lingwei Wei, Wei Zhou, Songlin Hu

TL;DR
This paper introduces InfoPDF, an information-theoretic framework that denoises and fuses real and synthetic propagation data to improve fake news detection accuracy.
Contribution
It proposes a novel mutual information-based method to effectively fuse real and synthetic propagation signals, enhancing detection performance.
Findings
InfoPDF outperforms existing methods on three real-world datasets.
The framework can estimate attribute-level reliabilities.
It learns more discriminative propagation representations.
Abstract
Incomplete propagation data significantly hinders robust fake news detection. Recent approaches leverage large language models to simulate missing user interactions via role-playing, thereby enriching propagation with synthetic signals. However, such propagation data is intrinsically unreliable, and directly fusing it can lead to biased representations, leading to limited detection performance. In this paper, we alleviate the unreliability of synthetic propagation from the mutual information perspective and propose a novel information-theoretic propagation denoising and fusion (InfoPDF) framework to learn effective representations from both real and synthetic propagation. Specifically, we first generate attribute-specific synthetic propagation using large language models. Then we model each synthetic propagation graph as a probabilistic latent distribution to guide reliability-aware…
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