Doubly robust off-policy evaluation with shrinkage
Machine Learning
2020-09-22 v2 Machine Learning
Abstract
We propose a new framework for designing estimators for off-policy evaluation in contextual bandits. Our approach is based on the asymptotically optimal doubly robust estimator, but we shrink the importance weights to minimize a bound on the mean squared error, which results in a better bias-variance tradeoff in finite samples. We use this optimization-based framework to obtain three estimators: (a) a weight-clipping estimator, (b) a new weight-shrinkage estimator, and (c) the first shrinkage-based estimator for combinatorial action sets. Extensive experiments in both standard and combinatorial bandit benchmark problems show that our estimators are highly adaptive and typically outperform state-of-the-art methods.
Keywords
Cite
@article{arxiv.1907.09623,
title = {Doubly robust off-policy evaluation with shrinkage},
author = {Yi Su and Maria Dimakopoulou and Akshay Krishnamurthy and Miroslav Dudík},
journal= {arXiv preprint arXiv:1907.09623},
year = {2020}
}