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Quantile Off-Policy Evaluation via Deep Conditional Generative Learning

Machine Learning 2023-01-02 v1 Machine Learning

Abstract

Off-Policy evaluation (OPE) is concerned with evaluating a new target policy using offline data generated by a potentially different behavior policy. It is critical in a number of sequential decision making problems ranging from healthcare to technology industries. Most of the work in existing literature is focused on evaluating the mean outcome of a given policy, and ignores the variability of the outcome. However, in a variety of applications, criteria other than the mean may be more sensible. For example, when the reward distribution is skewed and asymmetric, quantile-based metrics are often preferred for their robustness. In this paper, we propose a doubly-robust inference procedure for quantile OPE in sequential decision making and study its asymptotic properties. In particular, we propose utilizing state-of-the-art deep conditional generative learning methods to handle parameter-dependent nuisance function estimation. We demonstrate the advantages of this proposed estimator through both simulations and a real-world dataset from a short-video platform. In particular, we find that our proposed estimator outperforms classical OPE estimators for the mean in settings with heavy-tailed reward distributions.

Keywords

Cite

@article{arxiv.2212.14466,
  title  = {Quantile Off-Policy Evaluation via Deep Conditional Generative Learning},
  author = {Yang Xu and Chengchun Shi and Shikai Luo and Lan Wang and Rui Song},
  journal= {arXiv preprint arXiv:2212.14466},
  year   = {2023}
}
R2 v1 2026-06-28T07:56:26.924Z