Skip to yearly menu bar Skip to main content


Poster

Variance-Dependent Regret Bounds for Nonstationary Linear Bandits

Xinran Li · Jun Zhang · Xiaoyan Hu · Danqi Liao


Abstract: We investigate the non-stationary stochastic linear bandit problem where the reward distribution evolves each round. Existing algorithms characterize the non-stationarity by the total variation budget BK, which is the summation of the change of the consecutive feature vectors of the linear bandits over K rounds. However, such a quantity only measures the non-stationarity with respect to the expectation of the reward distribution, which makes existing algorithms sub-optimal under the general non-stationary distribution setting. In this work, we propose algorithms that utilize the variance of the reward distribution as well as the BK, and show that they can achieve tighter regret upper bounds. Specifically, we introduce two novel algorithms: Restarted WeightedOFUL+ and Restarted SAVE+. These algorithms address cases where the variance information of the rewards is known and unknown, respectively. Notably, when the total variance VK is much smaller than K, our algorithms outperform previous state-of-the-art results on non-stationary stochastic linear bandits under different settings. Experimental evaluations further validate the superior performance of our proposed algorithms over existing works.

Live content is unavailable. Log in and register to view live content