May 1, 2026
Rezvan MohammadiBaghmolaei

Rezvan MohammadiBaghmolaei

Academic Rank: Assistant professor
Address: Faculty of Intelligent Systems Engineering and Data Science, 4th Floor
Degree: Ph.D in Artificial Intelligence
Phone: --
Faculty: Faculty of Intelligent Systems and Data Science

Research

Title
Emotion-Robust Fake News Detection through Proximal Plolicy Optimization
Type Presentation
Keywords
Fake News Detection, Emotional Manipulation Multimodal Learning, Reinforcement Learning, Adversarial Training
Researchers amir rezaeeian (First researcher) , Rezvan MohammadiBaghmolaei (Second researcher) , Hossein Adlband (Third researcher)

Abstract

Emotionally manipulative fake news poses a serious challenge to traditional misinformation detection models, which are often sensitive to sentiment-driven cues. This paper introduces a novel reinforcement learning–based framework aimed at improving robustness against emotional manipulation in fake news. The proposed multimodal model integrates textual representations of news content with aggregated emotional signals from user comments, while combining reinforcement learning and adversarial training to encourage stable predictions under sentiment perturbations. Experiments on large-scale benchmarks demonstrate that the approach consistently outperforms standard transformer-based baselines and exhibits strong generalization in zero-shot settings across multiple datasets. By explicitly addressing emotional adversarial behavior, this work highlights the effectiveness of reinforcement learning for robust fake news detection and opens new directions for emotion-aware misinformation analysis.