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Persistent rule-based interactive reinforcement learning

Version 2 2024-06-04, 15:51
Version 1 2021-09-13, 08:23
journal contribution
posted on 2024-06-04, 15:51 authored by A Bignold, F Cruz, Richard DazeleyRichard Dazeley, P Vamplew, C Foale
Interactive reinforcement learning has allowed speeding up the learning process in autonomous agents by including a human trainer providing extra information to the agent in real-time. Current interactive reinforcement learning research has been limited to real-time interactions that offer relevant user advice to the current state only. Additionally, the information provided by each interaction is not retained and instead discarded by the agent after a single-use. In this work, we propose a persistent rule-based interactive reinforcement learning approach, i.e., a method for retaining and reusing provided knowledge, allowing trainers to give general advice relevant to more than just the current state. Our experimental results show persistent advice substantially improves the performance of the agent while reducing the number of interactions required for the trainer. Moreover, rule-based advice shows similar performance impact as state-based advice, but with a substantially reduced interaction count.

History

Journal

Neural Computing and Applications

Pagination

1-18

Location

Berlin, Germany

ISSN

0941-0643

eISSN

1433-3058

Language

English

Publication classification

C1 Refereed article in a scholarly journal

Publisher

Springer