AI Agents 相关度: 8/10

Decoding the Human Factor: High Fidelity Behavioral Prediction for Strategic Foresight

Ben Yellin, Ehud Ezra, Mark Foreman, Shula Grinapol
arXiv: 2602.17222v1 发布: 2026-02-19 更新: 2026-02-19

AI 摘要

提出LBM模型,通过心理特征嵌入提升LLM在复杂情境下的行为预测能力。

主要贡献

  • 提出Large Behavioral Model (LBM)
  • 使用高维心理特征进行行为嵌入
  • 证明LBM在高精度行为模拟上的有效性

方法论

微调Llama-3.1-8B-Instruct,使用包含个体心理特征和行为选择的专有数据集进行训练。

原文摘要

Predicting human decision-making in high-stakes environments remains a central challenge for artificial intelligence. While large language models (LLMs) demonstrate strong general reasoning, they often struggle to generate consistent, individual-specific behavior, particularly when accurate prediction depends on complex interactions between psychological traits and situational constraints. Prompting-based approaches can be brittle in this setting, exhibiting identity drift and limited ability to leverage increasingly detailed persona descriptions. To address these limitations, we introduce the Large Behavioral Model (LBM), a behavioral foundation model fine-tuned to predict individual strategic choices with high fidelity. LBM shifts from transient persona prompting to behavioral embedding by conditioning on a structured, high-dimensional trait profile derived from a comprehensive psychometric battery. Trained on a proprietary dataset linking stable dispositions, motivational states, and situational constraints to observed choices, LBM learns to map rich psychological profiles to discrete actions across diverse strategic dilemmas. In a held-out scenario evaluation, LBM fine-tuning improves behavioral prediction relative to the unadapted Llama-3.1-8B-Instruct backbone and performs comparably to frontier baselines when conditioned on Big Five traits. Moreover, we find that while prompting-based baselines exhibit a complexity ceiling, LBM continues to benefit from increasingly dense trait profiles, with performance improving as additional trait dimensions are provided. Together, these results establish LBM as a scalable approach for high-fidelity behavioral simulation, enabling applications in strategic foresight, negotiation analysis, cognitive security, and decision support.

标签

行为预测 LLM 心理学 战略分析

arXiv 分类

cs.AI