ScioMind: Cognitively Grounded Multi-Agent Social Simulation with Anchoring-Based Belief Dynamics and Dynamic Profiles
Yitian Yang, Yiqun Duan, Linghan Huang, Yiqi Zhu, Francesco Bailo, Chunmeizi Su, Huaming Chen

TL;DR
ScioMind is a cognitively grounded multi-agent simulation framework that combines structured opinion dynamics with LLM reasoning, improving realism and diversity in social opinion modeling.
Contribution
It introduces a novel integration of belief anchoring, hierarchical memory, and dynamic profiles to enhance LLM-based social simulations.
Findings
Dynamic profiles increase opinion diversity.
Memory and reflection reduce oscillations.
Anchoring induces persistent belief trajectories.
Abstract
Large language model (LLM)-based multi-agent simulation offers a powerful testbed for studying social opinion dynamics. Yet current approaches often adopt two contrasting methods: either relying on fixed update rules with limited cognitive grounding or delegating belief change largely to unconstrained LLM interaction. We introduce ScioMind, a cognitively grounded simulation framework that bridges these paradigms by combining structured opinion dynamics with LLM-based agent reasoning. ScioMind integrates three key components: 1) a memory-anchored belief update rule that modulates susceptibility to influence via personality-conditioned anchoring strength; 2) a hierarchical memory architecture that supports persistent, experience-driven belief formation; and 3) dynamic agent profiles derived from a corpus-grounded retrieval pipeline, enabling heterogeneous personalities, rationales, and…
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