Please use this identifier to cite or link to this item: http://hdl.handle.net/2445/182959
Title: Towards sample-efficient policy learning with DAC-ML
Author: Freire, Ismael T.
Amil, Adrián F.
Vouloutsi, Vasiliki
Verschure, Paul F. M. J.
Keywords: Aprenentatge automàtic
Presa de decisions
Machine learning
Decision making
Issue Date: 1-Jul-2021
Publisher: Elsevier B.V.
Abstract: The sample-inefficiency problem in Artificial Intelligence refers to the inability of current Deep Reinforcement Learning models to optimize action policies within a small number of episodes. Recent studies have tried to overcome this limitation by adding memory systems and architectural biases to improve learning speed, such as in Episodic Reinforcement Learning. However, despite achieving incremental improvements, their performance is still not comparable to how humans learn behavioral policies. In this paper, we capitalize on the design principles of the Distributed Adaptive Control (DAC) theory of mind and brain to build a novel cognitive architecture (DAC-ML) that, by incorporating a hippocampus-inspired sequential memory system, can rapidly converge to effective action policies that maximize reward acquisition in a challenging foraging task.
Note: Reproducció del document publicat a: https://doi.org/10.1016/j.procs.2021.06.035
It is part of: Procedia Computer Science, 2021, vol 190, p. 256-262
URI: http://hdl.handle.net/2445/182959
Related resource: https://doi.org/10.1016/j.procs.2021.06.035
ISSN: Freire IT;Amil AF;Vouloutsi V;Verschure PFMJ. Towards sample-efficient policy learning with DAC-ML. Procedia Computer Science, 2021, 190, 256-262
1877-0509
Appears in Collections:Articles publicats en revistes (Institut de Bioenginyeria de Catalunya (IBEC))

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