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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 251260 of 514 papers

TitleStatusHype
Probabilistic Insights for Efficient Exploration Strategies in Reinforcement Learning0
Processing Document Collections to Automatically Extract Linked Data: Semantic Storytelling Technologies for Smart Curation Workflows0
Protein design by multiobjective optimization: evolutionary and non-evolutionary approaches0
Provably Efficient Exploration in Constrained Reinforcement Learning:Posterior Sampling Is All You Need0
Provably Efficient Exploration in Inverse Constrained Reinforcement Learning0
Provably Efficient Exploration in Policy Optimization0
Provably Efficient Exploration in Quantum Reinforcement Learning with Logarithmic Worst-Case Regret0
Provably Efficient Exploration in Reward Machines with Low Regret0
Provably Efficient Representation Learning with Tractable Planning in Low-Rank POMDP0
QueryBuilder: Human-in-the-Loop Query Development for Information Retrieval0
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