A Simple and Optimal Policy Design with Safety against Heavy-tailed Risk for Stochastic Bandits

We design new policies that ensure both worst-case optimality for expected regret and light-tailed risk for regret distribution in the stochastic multi-armed bandit problem. Recently, arXiv:2109.13595 showed that information-theoretically optimized bandit algorithms as well as standard UCB policies suffer from some serious heavy-tailed risk. Inspired by their results, we further show that heavy-tailed risk actually exists for all "instance-dependent consistent" policies. In particular, any policy that incurs an instance-dependent expected regret must incur a linear regret with probability . With the aim to ensure safety against such heavy-tailed risk, starting from the two-armed bandit setting, we provide a simple policy design that (i) has the worst-case optimality for the expected regret at order and (ii) has the worst-case tail probability of incurring a linear regret decay at an optimal exponential rate . Next, we improve the policy design and analysis to the general -armed bandit setting. Specifically, the worst-case probability of incurring a regret larger than is upper bounded by . We also enhance the policy design to accommodate the "any-time" setting where is not known a priori. A brief account of numerical experiments is conducted to illustrate the theoretical findings. We conclude by extending our proposed policy design to the general stochastic linear bandit setting and obtain light-tailed regret bound. Our results reveal insights on the incompatibility between consistency and light-tailed risk, whereas indicate that worst-case optimality on expected regret and light-tailed risk on regret distribution are compatible.
View on arXiv