LANCE: Exploration and Reflection for LLM-based Textual Attacks on News Recommendation
A reflection-driven and exploration-oriented textual attack framework revealing vulnerabilities in news recommender systems.
Researcher in Recommender Systems & Trustworthy AI
I am a researcher in recommender systems and trustworthy AI. I completed my PhD in Computer Science at the University of Amsterdam, advised by Prof. dr. Maarten de Rijke. Before that, I worked with Prof. dr. Xiangnan He and Prof. dr. Xiang Wang.
My work focuses on generative recommendation, LLM agents for recommendation, and the safety and robustness of recommender systems, especially in sensitive domains such as news recommendation and personalized content delivery, where user trust and experience are critical.
I successfully defended my Ph.D. thesis titled From enhancement to exploitation: The dual role of LLMs in recommender systems on 23rd Oct 2025. I am looking for positions to continue my career.
PhD in Computer Science
University of Amsterdam
Combined M.E.–Ph.D. Program in Computer Science
University of Science and Technology of China
B.E. in Communication Engineering
Southwest Jiaotong University
A reflection-driven and exploration-oriented textual attack framework revealing vulnerabilities in news recommender systems.
ToolRec uses LLM agent and conduct tool-learning to achieve controllable, interpretable, and aligned recommendations.