Tom Perneczky

1paper

1 Paper

10.3LGMay 29
Variance-sensitive Thompson sampling for generalised linear bandits, revisited

Tom Perneczky, Marc Abeille, David Janz

We prove a variance-sensitive regret bound for Thompson sampling in stochastic generalised linear bandits. The argument assumes a warm-up, after which the regret is controlled through using the Gaussian Poincaré inequality. This bypasses the point at which previous optimism-based analyses break down. Removing the warm-up while retaining the same variance-sensitive scaling remains open, and appears nontrivial.