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Efficient Exploration

Efficient Exploration is one of the main obstacles in scaling up modern deep reinforcement learning algorithms. The main challenge in Efficient Exploration is the balance between exploiting current estimates, and gaining information about poorly understood states and actions.

Source: Randomized Value Functions via Multiplicative Normalizing Flows

Papers

Showing 411420 of 514 papers

TitleStatusHype
Learning to Explore in Motion and Interaction Tasks0
Memory Based Trajectory-conditioned Policies for Learning from Sparse Rewards0
Directed Exploration for Reinforcement Learning0
Learning-Driven Exploration for Reinforcement LearningCode0
Efficient Exploration via State Marginal MatchingCode0
Learning to Score Behaviors for Guided Policy OptimizationCode0
Self-Supervised Exploration via DisagreementCode1
Worst-Case Regret Bounds for Exploration via Randomized Value Functions0
Clustered Reinforcement Learning0
Learning Efficient and Effective Exploration Policies with Counterfactual Meta Policy0
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