Stochastic Online Learning with Probabilistic Graph Feedback
Abstract
We consider a problem of stochastic online learning with general probabilistic graph feedback, where each directed edge in the feedback graph has probability . Two cases are covered. (a) The one-step case, where after playing arm the learner observes a sample reward feedback of arm with independent probability . (b) The cascade case where after playing arm the learner observes feedback of all arms in a probabilistic cascade starting from -- for each with probability , if arm is played or observed, then a reward sample of arm would be observed with independent probability . Previous works mainly focus on deterministic graphs which corresponds to one-step case with , an adversarial sequence of graphs with certain topology guarantees, or a specific type of random graphs. We analyze the asymptotic lower bounds and design algorithms in both cases. The regret upper bounds of the algorithms match the lower bounds with high probability.
Cite
@article{arxiv.1903.01083,
title = {Stochastic Online Learning with Probabilistic Graph Feedback},
author = {Shuai Li and Wei Chen and Zheng Wen and Kwong-Sak Leung},
journal= {arXiv preprint arXiv:1903.01083},
year = {2019}
}