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Autores principales: Beylier, Charlotte, Hofmann, Simon M., Scherf, Nico
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2406.14324
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author Beylier, Charlotte
Hofmann, Simon M.
Scherf, Nico
author_facet Beylier, Charlotte
Hofmann, Simon M.
Scherf, Nico
contents The learning process of a reinforcement learning (RL) agent remains poorly understood beyond the mathematical formulation of its learning algorithm. To address this gap, we introduce attention-oriented metrics (ATOMs) to investigate the development of an RL agent's attention during training. In a controlled experiment, we tested ATOMs on three variations of a Pong game, each designed to teach the agent distinct behaviours, complemented by a behavioural assessment. ATOMs successfully delineate the attention patterns of an agent trained on each game variation, and that these differences in attention patterns translate into differences in the agent's behaviour. Through continuous monitoring of ATOMs during training, we observed that the agent's attention developed in phases, and that these phases were consistent across game variations. Overall, we believe that ATOM could help improve our understanding of the learning processes of RL agents and better understand the relationship between attention and learning.
format Preprint
id arxiv_https___arxiv_org_abs_2406_14324
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Revealing the Learning Process in Reinforcement Learning Agents Through Attention-Oriented Metrics
Beylier, Charlotte
Hofmann, Simon M.
Scherf, Nico
Machine Learning
The learning process of a reinforcement learning (RL) agent remains poorly understood beyond the mathematical formulation of its learning algorithm. To address this gap, we introduce attention-oriented metrics (ATOMs) to investigate the development of an RL agent's attention during training. In a controlled experiment, we tested ATOMs on three variations of a Pong game, each designed to teach the agent distinct behaviours, complemented by a behavioural assessment. ATOMs successfully delineate the attention patterns of an agent trained on each game variation, and that these differences in attention patterns translate into differences in the agent's behaviour. Through continuous monitoring of ATOMs during training, we observed that the agent's attention developed in phases, and that these phases were consistent across game variations. Overall, we believe that ATOM could help improve our understanding of the learning processes of RL agents and better understand the relationship between attention and learning.
title Revealing the Learning Process in Reinforcement Learning Agents Through Attention-Oriented Metrics
topic Machine Learning
url https://arxiv.org/abs/2406.14324