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Main Authors: Chacon-Chamorro, Manuela, Pinzón, Juan Sebastián, Manrique, Rubén, Giraldo, Luis Felipe, Quijano, Nicanor
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.11689
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author Chacon-Chamorro, Manuela
Pinzón, Juan Sebastián
Manrique, Rubén
Giraldo, Luis Felipe
Quijano, Nicanor
author_facet Chacon-Chamorro, Manuela
Pinzón, Juan Sebastián
Manrique, Rubén
Giraldo, Luis Felipe
Quijano, Nicanor
contents This paper presents a comparative analysis of cooperative resilience in multi-agent systems, defined as the ability to anticipate, resist, recover from, and transform to disruptive events that affect collective well-being. We focus on mixed-motive social dilemmas instantiated as a \textit{Tragedy of the Commons} environment from the Melting Pot suite, where we systematically compare human groups and Large Language Model (LLM)-based agents, each evaluated with and without explicit communication. Cooperative resilience is assessed under a continuously disruptive condition induced by a persistent unsustainable consumption bot, together with intermittent environmental shocks implemented as stochastic removal of shared resources across scenarios. This experimental design establishes a benchmark for cooperative resilience across agent architectures and interaction modalities, constituting a key step toward systematically comparing humans and LLM-based agents. Using this framework, we find that human groups with communication achieve the highest cooperative resilience compared to all other groups. Communication also improves the resilience of LLM agents, but their performance remains below human levels. Motivated by the performance of humans, we further examine a long-horizon setting with harsher environmental conditions, where humans sustain the shared resource and maintain high resilience in diverse disruption scenarios. Together, these results suggest that human decision-making under adverse social conditions can inform the design of artificial agents that promote prosocial and resilient behaviors.
format Preprint
id arxiv_https___arxiv_org_abs_2512_11689
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Evaluating Cooperative Resilience in Multiagent Systems: A Comparison Between Humans and LLMs
Chacon-Chamorro, Manuela
Pinzón, Juan Sebastián
Manrique, Rubén
Giraldo, Luis Felipe
Quijano, Nicanor
Multiagent Systems
This paper presents a comparative analysis of cooperative resilience in multi-agent systems, defined as the ability to anticipate, resist, recover from, and transform to disruptive events that affect collective well-being. We focus on mixed-motive social dilemmas instantiated as a \textit{Tragedy of the Commons} environment from the Melting Pot suite, where we systematically compare human groups and Large Language Model (LLM)-based agents, each evaluated with and without explicit communication. Cooperative resilience is assessed under a continuously disruptive condition induced by a persistent unsustainable consumption bot, together with intermittent environmental shocks implemented as stochastic removal of shared resources across scenarios. This experimental design establishes a benchmark for cooperative resilience across agent architectures and interaction modalities, constituting a key step toward systematically comparing humans and LLM-based agents. Using this framework, we find that human groups with communication achieve the highest cooperative resilience compared to all other groups. Communication also improves the resilience of LLM agents, but their performance remains below human levels. Motivated by the performance of humans, we further examine a long-horizon setting with harsher environmental conditions, where humans sustain the shared resource and maintain high resilience in diverse disruption scenarios. Together, these results suggest that human decision-making under adverse social conditions can inform the design of artificial agents that promote prosocial and resilient behaviors.
title Evaluating Cooperative Resilience in Multiagent Systems: A Comparison Between Humans and LLMs
topic Multiagent Systems
url https://arxiv.org/abs/2512.11689