Data-Driven Ranking and Selection: High-dimensional Covariates and General Dependence
Dec 10, 2018·

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Xiaocheng Li
Xiaowei Zhang
Zeyu Zheng
Abstract
This paper considers the problem of ranking and selection with covariates (R&S-C), which is first introduced by Shen et al. (2017) and aims to identify a decision rule that stipulates the best alternative as a function of the observable covariates. We propose a general data-driven framework to accommodate (i) high-dimensional covariates and (ii) general (nonlinear) dependence between the mean performance of an alternative and the covariates. For both scenarios, we design new selection procedures and provide certain statistical guarantees, by leveraging the data-intensive environment and various statistical learning tools. The performances of our procedures are exhibited through simulation experiments.
Type
Publication
Proceedings of the 2018 Winter Simulation Conference, 1933–1944

Authors
Assistant Professor in Analytics and Operations at Imperial College Business School.

Authors
I am an Associate Professor at HKUST, jointly appointed in the Department of Industrial Engineering and Decision Analytics and the Department of Economics, and the Academic Director of the MSc in FinTech program. I serve as an Associate Editor for several leading journals in the field, including Management Science, Operations Research, Navel Research Logistics, and Queueing Systems.

Authors
Associate Professor in Department of Industrial Engineering and Operations Research, UC Berkeley.