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MPPFND: A Dataset and Analysis of Detecting Fake News with Multi-Platform Propagation

MPPFND: A Dataset and Analysis of Detecting Fake News with Multi-Platform Propagation

来源:Arxiv_logoArxiv
英文摘要

Fake news spreads widely on social media, leading to numerous negative effects. Most existing detection algorithms focus on analyzing news content and social context to detect fake news. However, these approaches typically detect fake news based on specific platforms, ignoring differences in propagation characteristics across platforms. In this paper, we introduce the MPPFND dataset, which captures propagation structures across multiple platforms. We also describe the commenting and propagation characteristics of different platforms to show that their social contexts have distinct features. We propose a multi-platform fake news detection model (APSL) that uses graph neural networks to extract social context features from various platforms. Experiments show that accounting for cross-platform propagation differences improves fake news detection performance.

Congyuan Zhao、Lingwei Wei、Ziming Qin、Wei Zhou、Yunya Song、Songlin Hu

计算技术、计算机技术

Congyuan Zhao,Lingwei Wei,Ziming Qin,Wei Zhou,Yunya Song,Songlin Hu.MPPFND: A Dataset and Analysis of Detecting Fake News with Multi-Platform Propagation[EB/OL].(2025-05-16)[2025-06-12].https://arxiv.org/abs/2505.15834.点此复制

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