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Curious meta-controller: adaptive alternation between model-based and model-free control in deep reinforcement learning

Curious meta-controller: adaptive alternation between model-based and model-free control in deep reinforcement learning
Curious meta-controller: adaptive alternation between model-based and model-free control in deep reinforcement learning
Recent success in deep reinforcement learning for continuous control has been dominated by model-free approaches which, unlike model-based approaches, do not suffer from representational limitations in making assumptions about the world dynamics and model errors inevitable in complex domains. However, they require a lot of experiences compared to model-based approaches that are typically more sample-efficient. We propose to combine the benefits of the two approaches by presenting an integrated approach called Curious Meta-Controller. Our approach alternates adaptively between model-based and model-free control using a curiosity feedback based on the learning progress of a neural model of the dynamics in a learned latent space. We demonstrate that our approach can significantly improve the sample efficiency and achieve near-optimal performance on learning robotic reaching and grasping tasks from raw-pixel input in both dense and sparse reward settings.
1-8
Hafez, Muhammad Burhan
e8c991ab-d800-46f2-abeb-cb169a1ed47e
Weber, Cornelius
4e097e6c-840c-460a-8572-e8759f137e43
Kerzel, Matthias
a7ec71f0-3fa1-4acb-a46b-9198ba76ff14
Wermter, Stefan
80682cc6-4251-420a-af8a-f4d616fb0fcc
Hafez, Muhammad Burhan
e8c991ab-d800-46f2-abeb-cb169a1ed47e
Weber, Cornelius
4e097e6c-840c-460a-8572-e8759f137e43
Kerzel, Matthias
a7ec71f0-3fa1-4acb-a46b-9198ba76ff14
Wermter, Stefan
80682cc6-4251-420a-af8a-f4d616fb0fcc

Hafez, Muhammad Burhan, Weber, Cornelius, Kerzel, Matthias and Wermter, Stefan (2019) Curious meta-controller: adaptive alternation between model-based and model-free control in deep reinforcement learning. International Joint Conference on Neural Networks, , Budapest, Hungary. 14 - 19 Jul 2019. pp. 1-8 . (doi:10.1109/IJCNN.2019.8852254).

Record type: Conference or Workshop Item (Paper)

Abstract

Recent success in deep reinforcement learning for continuous control has been dominated by model-free approaches which, unlike model-based approaches, do not suffer from representational limitations in making assumptions about the world dynamics and model errors inevitable in complex domains. However, they require a lot of experiences compared to model-based approaches that are typically more sample-efficient. We propose to combine the benefits of the two approaches by presenting an integrated approach called Curious Meta-Controller. Our approach alternates adaptively between model-based and model-free control using a curiosity feedback based on the learning progress of a neural model of the dynamics in a learned latent space. We demonstrate that our approach can significantly improve the sample efficiency and achieve near-optimal performance on learning robotic reaching and grasping tasks from raw-pixel input in both dense and sparse reward settings.

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More information

Published date: 30 September 2019
Venue - Dates: International Joint Conference on Neural Networks, , Budapest, Hungary, 2019-07-14 - 2019-07-19

Identifiers

Local EPrints ID: 495848
URI: http://eprints.soton.ac.uk/id/eprint/495848
PURE UUID: f68c134e-9496-4b43-baa7-c198c0f040bb
ORCID for Muhammad Burhan Hafez: ORCID iD orcid.org/0000-0003-1670-8962

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Date deposited: 25 Nov 2024 17:50
Last modified: 26 Nov 2024 03:10

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Contributors

Author: Muhammad Burhan Hafez ORCID iD
Author: Cornelius Weber
Author: Matthias Kerzel
Author: Stefan Wermter

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