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Main Authors: Kim, Kwangho, Mishler, Alan, Zubizarreta, José R.
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2209.09538
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author Kim, Kwangho
Mishler, Alan
Zubizarreta, José R.
author_facet Kim, Kwangho
Mishler, Alan
Zubizarreta, José R.
contents We study a counterfactual mean-variance optimization, where the mean and variance are defined as functionals of counterfactual distributions. The optimization problem defines the optimal resource allocation under various constraints in a hypothetical scenario induced by a specified intervention, which may differ substantially from the observed world. We propose a doubly robust-style estimator for the optimal solution to the counterfactual mean-variance optimization problem and derive a closed-form expression for its asymptotic distribution. Our analysis shows that the proposed estimator attains fast parametric convergence rates while enabling tractable inference, even when incorporating nonparametric methods. We further address the calibration of the counterfactual covariance estimator to enhance the finite-sample performance of the proposed optimal solution estimators. Finally, we evaluate the proposed methods through simulation studies and demonstrate their applicability in real-world problems involving healthcare policy and financial portfolio construction.
format Preprint
id arxiv_https___arxiv_org_abs_2209_09538
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Counterfactual Mean-variance Optimization
Kim, Kwangho
Mishler, Alan
Zubizarreta, José R.
Methodology
We study a counterfactual mean-variance optimization, where the mean and variance are defined as functionals of counterfactual distributions. The optimization problem defines the optimal resource allocation under various constraints in a hypothetical scenario induced by a specified intervention, which may differ substantially from the observed world. We propose a doubly robust-style estimator for the optimal solution to the counterfactual mean-variance optimization problem and derive a closed-form expression for its asymptotic distribution. Our analysis shows that the proposed estimator attains fast parametric convergence rates while enabling tractable inference, even when incorporating nonparametric methods. We further address the calibration of the counterfactual covariance estimator to enhance the finite-sample performance of the proposed optimal solution estimators. Finally, we evaluate the proposed methods through simulation studies and demonstrate their applicability in real-world problems involving healthcare policy and financial portfolio construction.
title Counterfactual Mean-variance Optimization
topic Methodology
url https://arxiv.org/abs/2209.09538