Learning Domain Invariant Representations in Goal-conditioned Block MDPs
–Neural Information Processing Systems
Deep Reinforcement Learning (RL) is successful in solving many complex Markov Decision Processes (MDPs) problems. However, agents often face unanticipated environmental changes after deployment in the real world. These changes are often spurious and unrelated to the underlying problem, such as background shifts for visual input agents. Unfortunately, deep RL policies are usually sensitive to these changes and fail to act robustly against them. This resembles the problem of domain generalization in supervised learning.
goal-conditioned block mdp, goal-conditioned rl agent, learning domain invariant representation, (1 more...)
Neural Information Processing Systems
Oct-9-2024, 10:16:19 GMT
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