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 11261150 of 1262 papers

TitleStatusHype
A Reduction-Based Framework for Conservative Bandits and Reinforcement Learning0
Automatic Ensemble Learning for Online Influence Maximization0
AutoML for Contextual Bandits0
Autonomous Drug Design with Multi-Armed Bandits0
Balanced Linear Contextual Bandits0
Balanced off-policy evaluation in general action spaces0
Balancing Act: Prioritization Strategies for LLM-Designed Restless Bandit Rewards0
Ballooning Multi-Armed Bandits0
Bandit Algorithms for Prophet Inequality and Pandora's Box0
Exploration Through Reward Biasing: Reward-Biased Maximum Likelihood Estimation for Stochastic Multi-Armed Bandits0
BanditMF: Multi-Armed Bandit Based Matrix Factorization Recommender System0
BanditQ: Fair Bandits with Guaranteed Rewards0
BanditRank: Learning to Rank Using Contextual Bandits0
Bandit Regret Scaling with the Effective Loss Range0
Bandits Don't Follow Rules: Balancing Multi-Facet Machine Translation with Multi-Armed Bandits0
Bandits Don’t Follow Rules: Balancing Multi-Facet Machine Translation with Multi-Armed Bandits0
Bandits for Learning to Explain from Explanations0
Bandits meet Computer Architecture: Designing a Smartly-allocated Cache0
Bandit Social Learning: Exploration under Myopic Behavior0
Bandits Warm-up Cold Recommender Systems0
Preferences Evolve And So Should Your Bandits: Bandits with Evolving States for Online Platforms0
Bandits with Knapsacks beyond the Worst Case0
Bandits with Partially Observable Confounded Data0
Bandits with Temporal Stochastic Constraints0
Banker Online Mirror Descent0
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Benchmark Results

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