Automatic Noise Filtering with Dynamic Sparse Training in Deep Reinforcement Learning

Bram Grooten, Ghada Sokar, Shibhansh Dohare, Elena Mocanu, Matthew E. Taylor, Mykola Pechenizkiy, Decebal Constantin Mocanu

Onderzoeksoutput: Hoofdstuk in Boek/Rapport/CongresprocedureConferentiebijdrageAcademicpeer review

2 Citaten (Scopus)
1 Downloads (Pure)

Samenvatting

Tomorrow's robots will need to distinguish useful information from noise when performing different tasks. A household robot for instance may continuously receive a plethora of information about the home, but needs to focus on just a small subset to successfully execute its current chore. Filtering distracting inputs that contain irrelevant data has received little attention in the reinforcement learning literature. To start resolving this, we formulate a problem setting in reinforcement learning called the extremely noisy environment (ENE), where up to 99% of the input features are pure noise. Agents need to detect which features provide task-relevant information about the state of the environment. Consequently, we propose a new method termed Automatic Noise Filtering (ANF), which uses the principles of dynamic sparse training in synergy with various deep reinforcement learning algorithms. The sparse input layer learns to focus its connectivity on task-relevant features, such that ANF-SAC and ANF-TD3 outperform standard SAC and TD3 by a large margin, while using up to 95% fewer weights. Furthermore, we devise a transfer learning setting for ENEs, by permuting all features of the environment after 1M timesteps to simulate the fact that other information sources can become relevant as the world evolves. Again, ANF surpasses the baselines in final performance and sample complexity. Our code is available online.

Originele taal-2Engels
TitelAAMAS '23
SubtitelProceedings of the 2023 International Conference on Autonomous Agents and Multiagent Systems
Plaats van productieRichland
UitgeverijInternational Foundation for Autonomous Agents and Multiagent Systems (IFAAMAS)
Pagina's1932-1941
Aantal pagina's10
ISBN van elektronische versie978-1-4503-9432-1
DOI's
StatusGepubliceerd - 2023
Evenement22nd International Conference on Autonomous Agents and Multiagent System, AAMAS 2023 - London, Verenigd Koninkrijk
Duur: 29 mei 20232 jun. 2023
https://aamas2023.soton.ac.uk/

Congres

Congres22nd International Conference on Autonomous Agents and Multiagent System, AAMAS 2023
Verkorte titelAAMAS 2023
Land/RegioVerenigd Koninkrijk
StadLondon
Periode29/05/232/06/23
Internet adres

Financiering

This publication is part of the project AMADeuS (with project number 18489) of the Open Technology Programme, which is partly financed by the Dutch Research Council (NWO). This research used the Dutch national e-infrastructure with the support of the SURF Cooperative, using grant no. EINF-3098. Part of this work has taken place in the Intelligent Robot Learning (IRL) Lab at the University of Alberta, which is supported in part by research grants from the Alberta Machine Intelligence Institute (Amii); a Canada CIFAR AI Chair, Amii; Compute Canada; Huawei; Mitacs; and NSERC. We thank Joan Falcó Roget, Mickey Beurskens, Anne van den Berg, and Rik Grooten for the fruitful discussions. Finally, we thank the anonymous reviewers and Antonie Bodley for their thorough proofreading and useful comments.

FinanciersFinanciernummer
Huawei Technologies Co., Ltd.
Surf, StichtingEINF-3098
Alberta Machine Intelligence Institute (Amii)
Natural Sciences and Engineering Research Council of Canada
University of Alberta
Nederlandse Organisatie voor Wetenschappelijk Onderzoek
Mitacs

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