SOTAVerified

Multi-Armed Bandits

Multi-armed bandits refer to a task where a fixed amount of resources must be allocated between competing resources that maximizes expected gain. Typically these problems involve an exploration/exploitation trade-off.

( Image credit: Microsoft Research )

Papers

Showing 12111220 of 1262 papers

TitleStatusHype
Combinatorial Multi-armed Bandits: Arm Selection via Group Testing0
Combinatorial Multi-armed Bandits for Real-Time Strategy Games0
Combinatorial Multi-Armed Bandits with Filtered Feedback0
Combinatorial Multivariant Multi-Armed Bandits with Applications to Episodic Reinforcement Learning and Beyond0
Combinatorial Network Optimization with Unknown Variables: Multi-Armed Bandits with Linear Rewards0
Combinatorial Pure Exploration of Multi-Armed Bandits0
Combinatorial Pure Exploration with Full-bandit Feedback and Beyond: Solving Combinatorial Optimization under Uncertainty with Limited Observation0
Combinatorial Semi-Bandits with Knapsacks0
Combining Difficulty Ranking with Multi-Armed Bandits to Sequence Educational Content0
Combining Online Learning and Offline Learning for Contextual Bandits with Deficient Support0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1NeuralLinear FullPosterior-MRCumulative regret1.92Unverified
2Linear FullPosterior-MRCumulative regret1.82Unverified