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Main Authors: Albarracin, Mahault, Hipolito, Ines, Raffa, Maria, Kinghorn, Paul
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.07593
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author Albarracin, Mahault
Hipolito, Ines
Raffa, Maria
Kinghorn, Paul
author_facet Albarracin, Mahault
Hipolito, Ines
Raffa, Maria
Kinghorn, Paul
contents Active inference helps us simulate adaptive behavior and decision-making in biological and artificial agents. Building on our previous work exploring the relationship between active inference, well-being, resilience, and sustainability, we present a computational model of an agent learning sustainable resource management strategies in both static and dynamic environments. The agent's behavior emerges from optimizing its own well-being, represented by prior preferences, subject to beliefs about environmental dynamics. In a static environment, the agent learns to consistently consume resources to satisfy its needs. In a dynamic environment where resources deplete and replenish based on the agent's actions, the agent adapts its behavior to balance immediate needs with long-term resource availability. This demonstrates how active inference can give rise to sustainable and resilient behaviors in the face of changing environmental conditions. We discuss the implications of our model, its limitations, and suggest future directions for integrating more complex agent-environment interactions. Our work highlights active inference's potential for understanding and shaping sustainable behaviors.
format Preprint
id arxiv_https___arxiv_org_abs_2406_07593
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Modeling Sustainable Resource Management using Active Inference
Albarracin, Mahault
Hipolito, Ines
Raffa, Maria
Kinghorn, Paul
Artificial Intelligence
Active inference helps us simulate adaptive behavior and decision-making in biological and artificial agents. Building on our previous work exploring the relationship between active inference, well-being, resilience, and sustainability, we present a computational model of an agent learning sustainable resource management strategies in both static and dynamic environments. The agent's behavior emerges from optimizing its own well-being, represented by prior preferences, subject to beliefs about environmental dynamics. In a static environment, the agent learns to consistently consume resources to satisfy its needs. In a dynamic environment where resources deplete and replenish based on the agent's actions, the agent adapts its behavior to balance immediate needs with long-term resource availability. This demonstrates how active inference can give rise to sustainable and resilient behaviors in the face of changing environmental conditions. We discuss the implications of our model, its limitations, and suggest future directions for integrating more complex agent-environment interactions. Our work highlights active inference's potential for understanding and shaping sustainable behaviors.
title Modeling Sustainable Resource Management using Active Inference
topic Artificial Intelligence
url https://arxiv.org/abs/2406.07593