MALLES: A Multi-agent LLMs-based Economic Sandbox with Consumer Preference Alignment
Yusen Wu, Yiran Liu, Xiaotie Deng

TL;DR
MALLES introduces a multi-agent LLM-based economic simulation framework that aligns consumer preferences and models complex interactions, improving decision prediction accuracy and simulation stability in high-dimensional economic environments.
Contribution
This work presents a novel multi-agent LLM framework with preference learning and mean-field mechanisms for stable, cross-domain economic simulations, addressing data sparsity and agent heterogeneity.
Findings
Enhanced product selection accuracy
Improved purchase quantity prediction
Greater simulation stability
Abstract
In the real economy, modern decision-making is fundamentally challenged by high-dimensional, multimodal environments, which are further complicated by agent heterogeneity and combinatorial data sparsity. This paper introduces a Multi-Agent Large Language Model-based Economic Sandbox (MALLES), leveraging the inherent generalization capabilities of large-sacle models to establish a unified simulation framework applicable to cross-domain and cross-category scenarios. Central to our approach is a preference learning paradigm in which LLMs are economically aligned via post-training on extensive, heterogeneous transaction records across diverse product categories. This methodology enables the models to internalize and transfer latent consumer preference patterns, thereby mitigating the data sparsity issues prevalent in individual categories. To enhance simulation stability, we implement a…
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Taxonomy
TopicsForecasting Techniques and Applications · Stock Market Forecasting Methods · Consumer Market Behavior and Pricing
