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Hauptverfasser: Tong, Zhao, Gong, Chunlin, Gu, Yimeng, Shi, Haichao, Liu, Qiang, Wu, Shu, Zhang, Xiao-Yu
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2510.09712
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author Tong, Zhao
Gong, Chunlin
Gu, Yimeng
Shi, Haichao
Liu, Qiang
Wu, Shu
Zhang, Xiao-Yu
author_facet Tong, Zhao
Gong, Chunlin
Gu, Yimeng
Shi, Haichao
Liu, Qiang
Wu, Shu
Zhang, Xiao-Yu
contents Online fake news profoundly distorts public judgment and erodes trust in social platforms. While existing detectors achieve competitive performance on benchmark datasets, they remain notably vulnerable to malicious comments designed specifically to induce misclassification. This evolving threat landscape necessitates detection systems that simultaneously prioritize predictive accuracy and structural robustness. However, current detectors often fail to generalize across diverse and novel comment attack patterns. To bridge this gap, we propose AdComment, an adaptive adversarial training framework for robustness enhancement against diverse malicious comments. Based on cognitive psychology, we categorize adversarial comments into Fact Distortion, Logical Confusion, and Emotional Manipulation, and leverage LLMs to synthesize diverse, category-specific perturbations. Central to our framework is an InfoDirichlet Resampling (IDR) mechanism that dynamically adjusts malicious comment proportions during training, thereby steering optimization toward the model's most susceptible regions. Experimental results demonstrate that our approach achieves state-of-the-art performance on three benchmark datasets, improving the F1 scores by 17.9%, 14.5% and 9.0%, respectively.
format Preprint
id arxiv_https___arxiv_org_abs_2510_09712
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Group-Adaptive Adversarial Learning for Robust Fake News Detection Against Malicious Comments
Tong, Zhao
Gong, Chunlin
Gu, Yimeng
Shi, Haichao
Liu, Qiang
Wu, Shu
Zhang, Xiao-Yu
Machine Learning
Artificial Intelligence
Computation and Language
Online fake news profoundly distorts public judgment and erodes trust in social platforms. While existing detectors achieve competitive performance on benchmark datasets, they remain notably vulnerable to malicious comments designed specifically to induce misclassification. This evolving threat landscape necessitates detection systems that simultaneously prioritize predictive accuracy and structural robustness. However, current detectors often fail to generalize across diverse and novel comment attack patterns. To bridge this gap, we propose AdComment, an adaptive adversarial training framework for robustness enhancement against diverse malicious comments. Based on cognitive psychology, we categorize adversarial comments into Fact Distortion, Logical Confusion, and Emotional Manipulation, and leverage LLMs to synthesize diverse, category-specific perturbations. Central to our framework is an InfoDirichlet Resampling (IDR) mechanism that dynamically adjusts malicious comment proportions during training, thereby steering optimization toward the model's most susceptible regions. Experimental results demonstrate that our approach achieves state-of-the-art performance on three benchmark datasets, improving the F1 scores by 17.9%, 14.5% and 9.0%, respectively.
title Group-Adaptive Adversarial Learning for Robust Fake News Detection Against Malicious Comments
topic Machine Learning
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2510.09712