conference

Data Efficient Safe Reinforcement Learning

Organised by: institute of electrical and electronics engineering,
Publication: 2022 IEEE International Conference on Systems, Man, and Cybernetics (SMC)

Area/Stream: Social Science,
Authors: Sindhu Padakandla; Prabuchandran K J; Sourav Ganguly; Shalabh Bhatnagar
Keywords: Reinforcement learning , Benchmark testing , Prediction algorithms , Control systems , Hazards , Entropy , Cybernetics
Conference Name: IEEE International Conference on Systems, Man and Cybernetics

Year: 2022,
Month: October

Page No: ,
ISSN/ISBN: ,
DOI/Link: https://ieeexplore.ieee.org/document/9945313/keywords#keywords

Abstract:

Applying reinforcement learning (RL) methods for real world applications pose multiple challenges - the foremost being safety of the system controlled by the learning agent and the learning efficiency. An RL agent learns to control a system by exploring the available actions in various operating states. In some states, when the RL agent exercises an exploratory action, the system may enter unsafe operation, which can lead to safety hazards both for the system as well as for humans supervising the system. RL algorithms thus must learn to control the system respecting safety. In this work, we formulate the safe RL problem in the constrained off-policy setting that facilitates safe exploration by the RL agent. We then develop a sample efficient algorithm utilizing the cross-entropy method. The proposed algorithm’s safety performance is evaluated numerically on benchmark RL problems.

Cite this: Sindhu Padakandla; Prabuchandran K J; Sourav Ganguly; Shalabh Bhatnagar,"Data Efficient Safe Reinforcement Learning", IEEE International Conference on Systems, Man and Cybernetics, institute of electrical and electronics engineering, 2022 IEEE International Conference on Systems, Man, and Cybernetics (SMC), October, 2022, Prague, Czech Republic, , , https://ieeexplore.ieee.org/document/9945313/keywords#keywords
Views: 1027 Download File
News

Index your research paper @ RSquareL

Call for research papers evaluation 

Get listed your profile under listing based on your RSquareL Value

Registration for Indexing Author Journal Publisher Conference Organizer
Research Recognition & Listing Young Researcher Young Achiever Research Excellence

Contact Us

RSquareL is the indexing platform developed by Global Academicians & Researchers Network (GARNet.). RSquareL is the abstract database of peer-reviewed scientific journals, books, and conference proceedings that covers research topics across all scientific, technical, and medical disciplines.

Contact Details

Contact Email: publish@rsquarel.org
Write to Us: Click Here
Counter Start Date: 27-12-2021 Flag Counter

© 2024 RSquareL