Machine Learning and Soft Computing 2023
DOI: 10.5121/csit.2023.130205
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Review of Metrics to Measure the Stability, Robustness and Resilience of Reinforcement Learning

Abstract: Reinforcement learning (RL) has received significant interest in recent years, primarily because of the success of deep RL in solving many challenging tasks, such as playing chess, Go, and online computer games. However, with the increasing focus on RL, applications outside gaming and simulated environments require an understanding of the robustness, stability, and resilience of RL methods. To this end, we conducted a comprehensive literature review to characterize the available literature on these three behav… Show more

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