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 701725 of 1262 papers

TitleStatusHype
Online Meta-Learning in Adversarial Multi-Armed Bandits0
Online Posterior Sampling with a Diffusion Prior0
Online Residential Demand Response via Contextual Multi-Armed Bandits0
Online Restless Multi-Armed Bandits with Long-Term Fairness Constraints0
Online Semi-Supervised Learning with Bandit Feedback0
Online Statistical Inference for Contextual Bandits via Stochastic Gradient Descent0
Only Pay for What Is Uncertain: Variance-Adaptive Thompson Sampling0
On Minimax Optimal Offline Policy Evaluation0
On No-Sensing Adversarial Multi-player Multi-armed Bandits with Collision Communications0
Towards Tractable Optimism in Model-Based Reinforcement Learning0
On Penalization in Stochastic Multi-armed Bandits0
On Private and Robust Bandits0
On Quantum Natural Policy Gradients0
On Regret-optimal Cooperative Nonstochastic Multi-armed Bandits0
On Regret-Optimal Learning in Decentralized Multi-player Multi-armed Bandits0
On Sequential Elimination Algorithms for Best-Arm Identification in Multi-Armed Bandits0
On Speeding Up Language Model Evaluation0
On Submodular Contextual Bandits0
On the bias, risk and consistency of sample means in multi-armed bandits0
On the Complexity of Representation Learning in Contextual Linear Bandits0
On the Identification and Mitigation of Weaknesses in the Knowledge Gradient Policy for Multi-Armed Bandits0
On the Importance of Uncertainty in Decision-Making with Large Language Models0
On the Interplay Between Misspecification and Sub-optimality Gap in Linear Contextual Bandits0
Achieving the Pareto Frontier of Regret Minimization and Best Arm Identification in Multi-Armed Bandits0
On the Problem of Best Arm Retention0
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Benchmark Results

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