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Communication Dans Un Congrès Année : 2023

FLEX: an Adaptive Exploration Algorithm for Nonlinear Systems

Résumé

Model-based reinforcement learning is a powerful tool, but collecting data to fit an accurate model of the system can be costly. Exploring an unknown environment in a sample-efficient manner is hence of great importance. However, the complexity of dynamics and the computational limitations of real systems make this task challenging. In this work, we introduce FLEX, an exploration algorithm for nonlinear dynamics based on optimal experimental design. Our policy maximizes the information of the next step and results in an adaptive exploration algorithm, compatible with generic parametric learning models and requiring minimal resources. We test our method on a number of nonlinear environments covering different settings, including time-varying dynamics. Keeping in mind that exploration is intended to serve an exploitation objective, we also test our algorithm on downstream model-based classical control tasks and compare it to other state-of-theart model-based and model-free approaches. The performance achieved by FLEX is competitive and its computational cost is low.
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Dates et versions

hal-04176336 , version 1 (02-08-2023)

Identifiants

Citer

Matthieu Blanke, Marc Lelarge. FLEX: an Adaptive Exploration Algorithm for Nonlinear Systems. ICML 2023 - International Conference on Machine Learning, Jul 2023, Honololu, Hawaii, United States. pp.2577-2591. ⟨hal-04176336⟩
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