ICML2020
Bandits for BMO Functions
Tianyu Wang, Cynthia Rudin
被引用 5 次
摘要
We study the bandit problem where the underlying expected reward is a Bounded Mean Oscillation (BMO) function. BMO functions are allowed to be discontinuous and unbounded, and are useful in modeling signals with infinities in the do-main. We develop a toolset for BMO bandits, and provide an algorithm that can achieve poly-log -regret -- a regret measured against an arm that is optimal after removing a -sized portion of the arm space.