A Macro- and Micro-Hierarchical Transfer Learning Framework for Cross-Domain Fake News Detection
Xuankai Yang, Yan Wang, Xiuzhen Zhang, Shoujin Wang, Huaxiong Wang,, Kwok Yan Lam

TL;DR
This paper introduces a hierarchical transfer learning framework that enhances cross-domain fake news detection by disentangling relevant features and leveraging shared user engagement behaviors.
Contribution
It proposes a novel macro- and micro-hierarchical transfer learning framework (MMHT) that improves knowledge transfer and detection accuracy in cross-domain fake news detection.
Findings
Significantly outperforms state-of-the-art baselines in experiments.
Effectively disentangles veracity-relevant and irrelevant features.
Utilizes shared user behaviors to enhance transfer learning.
Abstract
Cross-domain fake news detection aims to mitigate domain shift and improve detection performance by transferring knowledge across domains. Existing approaches transfer knowledge based on news content and user engagements from a source domain to a target domain. However, these approaches face two main limitations, hindering effective knowledge transfer and optimal fake news detection performance. Firstly, from a micro perspective, they neglect the negative impact of veracity-irrelevant features in news content when transferring domain-shared features across domains. Secondly, from a macro perspective, existing approaches ignore the relationship between user engagement and news content, which reveals shared behaviors of common users across domains and can facilitate more effective knowledge transfer. To address these limitations, we propose a novel macro- and micro- hierarchical transfer…
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