English

Multiarmed Bandit Problems with Delayed Feedback

Data Structures and Algorithms 2015-03-17 v3 Machine Learning

Abstract

In this paper we initiate the study of optimization of bandit type problems in scenarios where the feedback of a play is not immediately known. This arises naturally in allocation problems which have been studied extensively in the literature, albeit in the absence of delays in the feedback. We study this problem in the Bayesian setting. In presence of delays, no solution with provable guarantees is known to exist with sub-exponential running time. We show that bandit problems with delayed feedback that arise in allocation settings can be forced to have significant structure, with a slight loss in optimality. This structure gives us the ability to reason about the relationship of single arm policies to the entangled optimum policy, and eventually leads to a O(1) approximation for a significantly general class of priors. The structural insights we develop are of key interest and carry over to the setting where the feedback of an action is available instantaneously, and we improve all previous results in this setting as well.

Keywords

Cite

@article{arxiv.1011.1161,
  title  = {Multiarmed Bandit Problems with Delayed Feedback},
  author = {Sudipto Guha and Kamesh Munagala and Martin Pal},
  journal= {arXiv preprint arXiv:1011.1161},
  year   = {2015}
}

Comments

The results and presentation in this paper are subsumed by the article "Approximation algorithms for Bayesian multi-armed bandit problems" arXiv:1306.3525

R2 v1 2026-06-21T16:39:01.112Z