CLAISIJan 27, 2024

Style-News: Incorporating Stylized News Generation and Adversarial Verification for Neural Fake News Detection

arXiv:2401.15509v1105 citationsh-index: 11EACL
Originality Incremental advance
AI Analysis

It addresses misinformation from AI-generated fake news on social media, offering an incremental advance in detection methods.

The paper tackles the problem of neural fake news detection by proposing Style-News, a framework that uses publisher metadata to generate stylized news and verify authenticity, resulting in significant improvements over baselines, such as up to 31.72% better detection accuracy.

With the improvements in generative models, the issues of producing hallucinations in various domains (e.g., law, writing) have been brought to people's attention due to concerns about misinformation. In this paper, we focus on neural fake news, which refers to content generated by neural networks aiming to mimic the style of real news to deceive people. To prevent harmful disinformation spreading fallaciously from malicious social media (e.g., content farms), we propose a novel verification framework, Style-News, using publisher metadata to imply a publisher's template with the corresponding text types, political stance, and credibility. Based on threat modeling aspects, a style-aware neural news generator is introduced as an adversary for generating news content conditioning for a specific publisher, and style and source discriminators are trained to defend against this attack by identifying which publisher the style corresponds with, and discriminating whether the source of the given news is human-written or machine-generated. To evaluate the quality of the generated content, we integrate various dimensional metrics (language fluency, content preservation, and style adherence) and demonstrate that Style-News significantly outperforms the previous approaches by a margin of 0.35 for fluency, 15.24 for content, and 0.38 for style at most. Moreover, our discriminative model outperforms state-of-the-art baselines in terms of publisher prediction (up to 4.64%) and neural fake news detection (+6.94% $\sim$ 31.72%).

Foundations

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