LLM-Driven Social Influence for Cooperative Behavior in Multi-Agent Systems
Fecha
2025-03-05Estado
info:eu-repo/semantics/publishedVersionMetadatos
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. This paper presents a novel approach to fostering cooperative behavior in multi-agent systems
(MAS) through Large Language Model (LLM)-driven social influence. We propose a theoretical framework
where agents’ decision-making processes are influenced not through direct action but by subtle, narrativedriven influences disseminated by LLMs. These influences guide agents toward cooperative behaviors,
such as rural repopulation, without requiring explicit policy interventions. We introduce a formal model
grounded in game theory and social network dynamics, where agents balance the direct benefits of action
with the indirect payoffs of LLM-guided influence. Using NASH equilibrium and Evolutionarily Stable
Strategies (ESS), we demonstrate how cooperative behaviors emerge even when agents remain inactive but
are subtly influenced by LLMs. Our experimental simulations validate the model, showing a strong positive
correlation between network centrality and influence propagation (r = 0.969, p < 0.006). Furthermore,
temporal analysis reveals that the average influence increases from approximately 0.05–0.06 in the initial
steps to 0.08–0.09 in later stages, indicating a cumulative and self-sustaining trend. In addition, the influence
values exhibit a near-normal distribution (Shapiro–Wilk test, p = 0.285) and yield a large effect size
(Cohen’s d = 4.530) when comparing agents with high versus low network centrality. Through visualization
techniques and statistical metrics, we demonstrate the effectiveness of the proposed framework and identify
promising directions for future research in AI-driven social influence. This study highlights the potential of
LLM-driven narratives as a cost-effective, scalable alternative to traditional policy interventions, offering
a new paradigm for promoting societal cooperation in areas such as rural repopulation, sustainability, and
community development.
LLM-Driven Social Influence for Cooperative Behavior in Multi-Agent Systems
Tipo de Actividad
Artículos en revistasISSN
2169-3536Palabras Clave
.Multi-agent systems, large language models, social influence, game theory, NASH equilibrium, rural repopulation