Autonomous Agents trained with Reinforcement Learning (RL) must explore the effects of their actions in different environment states to learn optimal control policies  or build a model of such environment. Exploration may be impractical in complex environments, hence ways to prune the exploration space must be found. In this paper, we propose to augment an autonomous agent with a causal model of the core dynamics of its environment, learnt on a simplified version of it and then used as a “driving assistant” for larger or more complex environments. Experiments with different RL algorithms, in increasingly complex environments, and with different exploration strategies, show that learning such a model improves the agent behaviour.

Improving Reinforcement Learning-Based Autonomous Agents with Causal Models / Briglia, G.; Lippi, M.; Mariani, S.; Zambonelli, F.. - 15395:(2025), pp. 267-283. ( 25th International Conference on Principles and Practice of Multi-Agent Systems, PRIMA 2024 Kyoto, Japan NOV 18-24, 2024) [10.1007/978-3-031-77367-9_20].

Improving Reinforcement Learning-Based Autonomous Agents with Causal Models

Briglia G.;Lippi M.;Mariani S.;Zambonelli F.
2025

Abstract

Autonomous Agents trained with Reinforcement Learning (RL) must explore the effects of their actions in different environment states to learn optimal control policies  or build a model of such environment. Exploration may be impractical in complex environments, hence ways to prune the exploration space must be found. In this paper, we propose to augment an autonomous agent with a causal model of the core dynamics of its environment, learnt on a simplified version of it and then used as a “driving assistant” for larger or more complex environments. Experiments with different RL algorithms, in increasingly complex environments, and with different exploration strategies, show that learning such a model improves the agent behaviour.
2025
no
Inglese
25th International Conference on Principles and Practice of Multi-Agent Systems, PRIMA 2024
Kyoto, Japan
NOV 18-24, 2024
PRIMA 2024: PRINCIPLES AND PRACTICE OF MULTI-AGENT SYSTEMS
15395
267
283
9783031773662
9783031773679
Springer Science and Business Media Deutschland GmbH
Autonomous Agents; Causal Discovery; Reinforcement Learning
Briglia, G.; Lippi, M.; Mariani, S.; Zambonelli, F.
Atti di CONVEGNO::Relazione in Atti di Convegno
273
4
Improving Reinforcement Learning-Based Autonomous Agents with Causal Models / Briglia, G.; Lippi, M.; Mariani, S.; Zambonelli, F.. - 15395:(2025), pp. 267-283. ( 25th International Conference on Principles and Practice of Multi-Agent Systems, PRIMA 2024 Kyoto, Japan NOV 18-24, 2024) [10.1007/978-3-031-77367-9_20].
none
info:eu-repo/semantics/conferenceObject
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1367093
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