Conservative Contextual Combinatorial Cascading Bandit
Abstract
Conservative mechanism is a desirable property in decision-making problems which balance the tradeoff between the exploration and exploitation. We propose the novel \emph{conservative contextual combinatorial cascading bandit (-bandit)}, a cascading online learning game which incorporates the conservative mechanism. At each time step, the learning agent is given some contexts and has to recommend a list of items but not worse than the base strategy and then observes the reward by some stopping rules. We design the -UCB algorithm to solve the problem and prove its n-step upper regret bound for two situations: known baseline reward and unknown baseline reward. The regret in both situations can be decomposed into two terms: (a) the upper bound for the general contextual combinatorial cascading bandit; and (b) a constant term for the regret from the conservative mechanism. We also improve the bound of the conservative contextual combinatorial bandit as a by-product. Experiments on synthetic data demonstrate its advantages and validate our theoretical analysis.
Cite
@article{arxiv.2104.08615,
title = {Conservative Contextual Combinatorial Cascading Bandit},
author = {Kun Wang and Canzhe Zhao and Shuai Li and Shuo Shao},
journal= {arXiv preprint arXiv:2104.08615},
year = {2021}
}