ICML2023
Smooth Non-stationary Bandits
Su Jia, Qian Xie, Nathan Kallus, Peter I. Frazier
14 citations
Abstract
In many applications of online decision making, the environment is non-stationary and it is therefore crucial to use bandit algorithms that handle changes. Most existing approaches are designed to protect against non-smooth changes, constrained only by total variation or Lipschitzness over time. However, in practice, environments often change smoothly, so such algorithms may incur higher-than-necessary regret. We study a non-stationary bandits problem where each arm's mean reward sequence can be embedded into a -Hölder function, i.e., a function that is -times Lipschitz-continuously differentiable. The non-stationarity becomes more smooth as increases. When , this corresponds to the non-smooth regime, where established a minimax regret of . We show the first separation between the smooth (i.e., ) and non-smooth (i.e., ) regimes by presenting a policy with regret on any -armed, -Hölder instance. We complement this result by showing that the minimax regret on the -Hölder family of instances is for any integer . This matches our upper bound for up to logarithmic factors. Furthermore, we validated the effectiveness of our policy through a comprehensive numerical study using real-world click-through rate data.