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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 125 of 655 papers

TitleStatusHype
Sample-Efficient Alignment for LLMsCode4
Steering Generative Models with Experimental Data for Protein Fitness OptimizationCode1
Langevin Soft Actor-Critic: Efficient Exploration through Uncertainty-Driven Critic LearningCode1
Optimizing Posterior Samples for Bayesian Optimization via RootfindingCode1
Batched Bayesian optimization by maximizing the probability of including the optimumCode1
A Bayesian Approach to Online PlanningCode1
Adaptive Anytime Multi-Agent Path Finding Using Bandit-Based Large Neighborhood SearchCode1
qPOTS: Efficient batch multiobjective Bayesian optimization via Pareto optimal Thompson samplingCode1
Transformers as Decision Makers: Provable In-Context Reinforcement Learning via Supervised PretrainingCode1
Provable and Practical: Efficient Exploration in Reinforcement Learning via Langevin Monte CarloCode1
Neural Exploitation and Exploration of Contextual BanditsCode1
Approximate Thompson Sampling via Epistemic Neural NetworksCode1
Sample-Then-Optimize Batch Neural Thompson SamplingCode1
Langevin Monte Carlo for Contextual BanditsCode1
Bayesian Optimization over Permutation SpacesCode1
EE-Net: Exploitation-Exploration Neural Networks in Contextual BanditsCode1
Deep Bandits Show-Off: Simple and Efficient Exploration with Deep NetworksCode1
Dynamic Slate Recommendation with Gated Recurrent Units and Thompson SamplingCode1
An empirical evaluation of active inference in multi-armed banditsCode1
Mercer Features for Efficient Combinatorial Bayesian OptimizationCode1
Optimal Thompson Sampling strategies for support-aware CVaR banditsCode1
Federated Bayesian Optimization via Thompson SamplingCode1
Neural Thompson SamplingCode1
Meta-Learning Stationary Stochastic Process Prediction with Convolutional Neural ProcessesCode1
Seamlessly Unifying Attributes and Items: Conversational Recommendation for Cold-Start UsersCode1
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