Chunyu Wei
2026
Emergent Relational Order in LLM Agent Societies: From Collective Affect to Authority Stratification
Zhiyuan Ji | Xinyu Chen | Ziqi Dai | Shiyun Tang | Chunyu Wei | Yueguo Chen
Findings of the Association for Computational Linguistics: ACL 2026
Zhiyuan Ji | Xinyu Chen | Ziqi Dai | Shiyun Tang | Chunyu Wei | Yueguo Chen
Findings of the Association for Computational Linguistics: ACL 2026
Fei Xiaotong’s Differential Order Pattern characterizes rural society as egocentric and relationally graded, with cooperation attenuating over social distance. Although often treated as culturally specific, its mechanistic basis remains under-operationalized, and prior LLM-based simulations have mainly addressed short-term coordination rather than long-horizon social structure. We propose CAREB-MAS, a multi-agent framework grounded in Affect Control Theory, Social Identity Theory, and Durkheimian collective affect. Agents reason through an emotion–ethics–belief chain and maintain dynamically evolving egocentric identities, while the macro environment specifies only individual production, preference-based allocation, and minimal interaction protocols. Across long-horizon simulations, agents spontaneously reproduce five core Differential Order phenomena: stable labor specialization, guanxi-based economic ethics, relational decay of cooperation, emergent relational authority, and clan-based center–periphery stratification. These patterns shift with production structure from kin-centered integration toward greater functional interdependence. Extensive experiment results support interpreting Differential Order as a structure-sensitive emergent outcome of general social mechanisms, with LLM-based multi-agent simulation providing a interdisciplinary framework for studying social structure and change.
Don’t Click That: Teaching Web Agents to Resist Deceptive Interfaces
Yilin Zhang | Yingkai Hua | Chunyu Wei | Xin Wang | Yueguo Chen
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yilin Zhang | Yingkai Hua | Chunyu Wei | Xin Wang | Yueguo Chen
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Vision-language model (VLM) based web agents demonstrate impressive autonomous GUI interaction but remain vulnerable to deceptive interface elements. Existing approaches either detect deception without task integration or document attacks without proposing defenses. We formalize deception-aware web agent defense and propose DUDE (Deceptive UI Detector Evaluator), a two-stage framework combining hybrid-reward learning with asymmetric penalties and experience summarization to distill failure patterns into transferable guidance. We introduce RUC (Real UI Clickboxes), a benchmark of 1,407 scenarios spanning four domains and deception categories. Experiments show DUDE reduces deception susceptibility by 53.8% while maintaining task performance, establishing an effective foundation for robust web agent deployment.