An evolutionary model of personality traits related to cooperative behavior using a large language model

arXiv:2310.05976v133 citationsh-index: 16
Originality Incremental advance
AI Analysis

This work addresses the dynamics of social evolution for researchers in AI and evolutionary biology, though it is incremental in applying LLMs to existing agent-based models.

The paper tackled the evolution of personality traits in cooperative behavior by integrating large language models into agent-based evolutionary simulations, demonstrating that such models can evolve cooperative behavior and show repeated shifts between cooperative and selfish traits.

This paper aims to shed light on the evolutionary dynamics of diverse and social populations by introducing the rich expressiveness of generative models into the trait expression of social agent-based evolutionary models. Specifically, we focus on the evolution of personality traits in the context of a game-theoretic relationship as a situation in which inter-individual interests exert strong selection pressures. We construct an agent model in which linguistic descriptions of personality traits related to cooperative behavior are used as genes. The deterministic strategies extracted from Large Language Model (LLM) that make behavioral decisions based on these personality traits are used as behavioral traits. The population is evolved according to selection based on average payoff and mutation of genes by asking LLM to slightly modify the parent gene toward cooperative or selfish. Through preliminary experiments and analyses, we clarify that such a model can indeed exhibit the evolution of cooperative behavior based on the diverse and higher-order representation of personality traits. We also observed the repeated intrusion of cooperative and selfish personality traits through changes in the expression of personality traits, and found that the emerging words in the evolved gene well reflected the behavioral tendency of its personality in terms of their semantics.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes