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 441450 of 1262 papers

TitleStatusHype
Epsilon-Best-Arm Identification in Pay-Per-Reward Multi-Armed Bandits0
Causal Feature Selection Method for Contextual Multi-Armed Bandits in Recommender System0
Equipping Experts/Bandits with Long-term Memory0
Adapting to Misspecification in Contextual Bandits0
Estimating Optimal Policy Value in General Linear Contextual Bandits0
Estimation Considerations in Contextual Bandits0
Expanding on Repeated Consumer Search Using Multi-Armed Bandits and Secretaries0
Constrained Policy Optimization for Controlled Self-Learning in Conversational AI Systems0
From Predictions to Decisions: The Importance of Joint Predictive Distributions0
Constant regret for sequence prediction with limited advice0
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Benchmark Results

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