MetaDetector: Meta Event Knowledge Transfer for Fake News Detection
Yasan Ding, Bin Guo, Yan Liu, Yunji Liang, Haocheng Shen, Zhiwen Yu

TL;DR
MetaDetector is an adversarial network that transfers shared event features to improve fake news detection across different events, effectively handling distribution shifts and outperforming existing methods.
Contribution
It introduces a novel meta-knowledge transfer framework using adversarial training to adapt fake news detection models to new events.
Findings
MetaDetector outperforms state-of-the-art methods on large-scale datasets.
It effectively transfers shared features across different events.
The model alleviates negative transfer caused by distribution shifts.
Abstract
The blooming of fake news on social networks has devastating impacts on society, economy, and public security. Although numerous studies are conducted for the automatic detection of fake news, the majority tend to utilize deep neural networks to learn event-specific features for superior detection performance on specific datasets. However, the trained models heavily rely on the training datasets and are infeasible to apply to upcoming events due to the discrepancy between event distributions. Inspired by domain adaptation theories, we propose an end-to-end adversarial adaptation network, dubbed as MetaDetector, to transfer meta knowledge (event-shared features) between different events. Specifically, MetaDetector pushes the feature extractor and event discriminator to eliminate event-specific features and preserve required event-shared features by adversarial training. Furthermore, the…
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Taxonomy
TopicsMisinformation and Its Impacts · Spam and Phishing Detection · Topic Modeling
