Thompson Sampling For Combinatorial Bandits: Polynomial Regret and Mismatched Sampling Paradox

Dec 9, 2024·
Raymond Zhang
Raymond Zhang
,
Richard Combes
· 0 min read
Abstract
We consider Thompson Sampling (TS) for linear combinatorial semi-bandits and subgaussian rewards. We propose the first known TS whose finite-time regret does not scale exponentially with the dimension of the problem. We further show the “mismatched sampling paradox”: A learner who knows the rewards distributions and samples from the correct posterior distribution can perform exponentially worse than a learner who does not know the rewards and simply samples from a well-chosen Gaussian posterior.
Type
Publication
In Neural Information Processing Systems 2024