SOTAVerified

Thompson Sampling

Thompson sampling, named after William R. Thompson, is a heuristic for choosing actions that addresses the exploration-exploitation dilemma in the multi-armed bandit problem. It consists of choosing the action that maximizes the expected reward with respect to a randomly drawn belief.

Papers

Showing 226250 of 655 papers

TitleStatusHype
Efficient Exploration for LLMs0
Efficient exploration of zero-sum stochastic games0
Bandits Under The Influence (Extended Version)0
Efficient exploration with Double Uncertain Value Networks0
Efficient Inference Without Trading-off Regret in Bandits: An Allocation Probability Test for Thompson Sampling0
Efficient kernelized bandit algorithms via exploration distributions0
Efficient Learning in Large-Scale Combinatorial Semi-Bandits0
Adaptively Optimize Content Recommendation Using Multi Armed Bandit Algorithms in E-commerce0
Efficient Model-Based Reinforcement Learning Through Optimistic Thompson Sampling0
Efficient Multivariate Bandit Algorithm with Path Planning0
Efficient Online Learning for Cognitive Radar-Cellular Coexistence via Contextual Thompson Sampling0
Batched Thompson Sampling for Multi-Armed Bandits0
Efficient Thompson Sampling for Online Matrix-Factorization Recommendation0
Efficient-UCBV: An Almost Optimal Algorithm using Variance Estimates0
Eluder Dimension and the Sample Complexity of Optimistic Exploration0
ε-Neural Thompson Sampling of Deep Brain Stimulation for Parkinson Disease Treatment0
Ensemble Sampling0
Epinet for Content Cold Start0
Epsilon-Greedy Thompson Sampling to Bayesian Optimization0
Bayesian Best-Arm Identification for Selecting Influenza Mitigation Strategies0
Estimating prediction error for complex samples0
A Copula approach for hyperparameter transfer learning0
Etat de l'art sur l'application des bandits multi-bras0
EVaDE : Event-Based Variational Thompson Sampling for Model-Based Reinforcement Learning0
Bayesian Optimization with LLM-Based Acquisition Functions for Natural Language Preference Elicitation0
Show:102550
← PrevPage 10 of 27Next →

No leaderboard results yet.