English

HAG: Hierarchical Demographic Tree-based Agent Generation for Topic-Adaptive Simulation

Artificial Intelligence 2026-04-07 v3

Abstract

High-fidelity agent initialization is crucial for credible Agent-Based Modeling across diverse domains. A robust framework should be Topic-Adaptive, capturing macro-level joint distributions while ensuring micro-level individual rationality. Existing approaches fall into two categories: static data-based retrieval methods that fail to adapt to unseen topics absent from the data, and LLM-based generation methods that lack macro-level distribution awareness, resulting in inconsistencies between micro-level persona attributes and reality. To address these problems, we propose HAG, a Hierarchical Agent Generation framework that formalizes population generation as a two-stage decision process. Firstly, utilizing a World Knowledge Model to infer hierarchical conditional probabilities to construct the Topic-Adaptive Tree, achieving macro-level distribution alignment. Then, grounded real-world data, instantiation and agentic augmentation are carried out to ensure micro-level consistency. Given the lack of specialized evaluation, we establish a multi-domain benchmark and a comprehensive PACE evaluation framework. Extensive experiments show that HAG significantly outperforms representative baselines, reducing population alignment errors by an average of 37.7% and enhancing sociological consistency by 18.8%.

Keywords

Cite

@article{arxiv.2601.05656,
  title  = {HAG: Hierarchical Demographic Tree-based Agent Generation for Topic-Adaptive Simulation},
  author = {Rongxin Chen and Tianyu Wu and Bingbing Xu and Jiatang Luo and Xiucheng Xu and Huawei Shen},
  journal= {arXiv preprint arXiv:2601.05656},
  year   = {2026}
}

Comments

Accepted by ACL 2026 main

R2 v1 2026-07-01T08:57:32.595Z