ICML2023

Contextual Combinatorial Bandits with Probabilistically Triggered Arms

Xutong Liu, Jinhang Zuo, Siwei Wang, John C. S. Lui, Mohammad Hajiesmaili, Adam Wierman, Wei Chen

26 citations

Abstract

We study contextual combinatorial bandits with probabilistically triggered arms (C2^2MAB-T) under a variety of smoothness conditions that capture a wide range of applications, such as contextual cascading bandits and contextual influence maximization bandits. Under the triggering probability modulated (TPM) condition, we devise the C2^2-UCB-T algorithm and propose a novel analysis that achieves an O~(dKT)\tilde{O}(d\sqrt{KT}) regret bound, removing a potentially exponentially large factor O(1/pmin)O(1/p_{\min}), where dd is the dimension of contexts, pminp_{\min} is the minimum positive probability that any arm can be triggered, and batch-size KK is the maximum number of arms that can be triggered per round. Under the variance modulated (VM) or triggering probability and variance modulated (TPVM) conditions, we propose a new variance-adaptive algorithm VAC2^2-UCB and derive a regret bound O~(dT)\tilde{O}(d\sqrt{T}), which is independent of the batch-size KK. As a valuable by-product, our analysis technique and variance-adaptive algorithm can be applied to the CMAB-T and C2^2MAB setting, improving existing results there as well. We also include experiments that demonstrate the improved performance of our algorithms compared with benchmark algorithms on synthetic and real-world datasets.