GGBond: Growing Graph-Based AI-Agent Society for Socially-Aware Recommender Simulation
Hailin Zhong, Hanlin Wang, Yujun Ye, Meiyi Zhang, Shengxin Zhu

TL;DR
GGBond is a social simulation platform that models user behavior and social influence dynamics to evaluate recommender systems in a realistic, long-term setting.
Contribution
It introduces a high-fidelity social simulation with cognitive agents and dynamic social graphs, enabling realistic long-term evaluation of recommender algorithms.
Findings
Sim-User Agents with psychological architectures simulate user behavior.
Dynamic social graphs model evolving social ties and trust.
Platform enables long-term, realistic recommender system evaluation.
Abstract
Current personalized recommender systems predominantly rely on static offline data for algorithm design and evaluation, significantly limiting their ability to capture long-term user preference evolution and social influence dynamics in real-world scenarios. To address this fundamental challenge, we propose a high-fidelity social simulation platform integrating human-like cognitive agents and dynamic social interactions to realistically simulate user behavior evolution under recommendation interventions. Specifically, the system comprises a population of Sim-User Agents, each equipped with a five-layer cognitive architecture that encapsulates key psychological mechanisms, including episodic memory, affective state transitions, adaptive preference learning, and dynamic trust-risk assessments. In particular, we innovatively introduce the Intimacy--Curiosity--Reciprocity--Risk (ICR2)…
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Taxonomy
TopicsRecommender Systems and Techniques · Human Mobility and Location-Based Analysis
