ICML2025

Improved Online Confidence Bounds for Multinomial Logistic Bandits

Joongkyu Lee, Min-hwan Oh

Abstract

In this paper, we propose an improved online confidence bound for multinomial logistic (MNL) models and apply this result to MNL bandits, achieving variance-dependent optimal regret. Recently, Lee & Oh (2024) established an online confidence bound for MNL models and achieved nearly minimax-optimal regret in MNL bandits. However, their results still depend on the normboundedness of the unknown parameter B and the maximum size of possible outcomes K. To address this, we first derive an online confidence bound of O ´?d log t `B? d ¯, which is a significant improvement over the previous bound of OpB ? d log t log Kq (Lee & Oh, 2024). This is mainly achieved by establishing tighter selfconcordant properties of the MNL loss and applying Ville's inequality to bound the estimation error. Using this new online confidence bound, we propose a constant-time algorithm, OFU-MNL++, which achieves a variance-dependent regret bound of O ´d log T b ř T t"1 σ 2 t ¯for sufficiently large T , where σ 2 t denotes the variance of the rewards at round t, d is the dimension of the contexts, and T is the total number of rounds. Furthermore, we introduce a Maximum Likelihood Estimation (MLE)-based algorithm, OFU-M 2 NL, which achieves an anytime polypBq-free regret of O ´d logpBT q b ř T t"1 σ 2 t ¯.