Model Selection in Utility-Maximizing Binary Prediction
Abstract
The maximum utility estimation proposed by Elliott and Lieli (2013) can be viewed as cost-sensitive binary classification; thus, its in-sample overfitting issue is similar to that of perceptron learning. A utility-maximizing prediction rule (UMPR) is constructed to alleviate the in-sample overfitting of the maximum utility estimation. We establish non-asymptotic upper bounds on the difference between the maximal expected utility and the generalized expected utility of the UMPR. Simulation results show that the UMPR with an appropriate data-dependent penalty achieves larger generalized expected utility than common estimators in the binary classification if the conditional probability of the binary outcome is misspecified.
Keywords
Cite
@article{arxiv.1903.00716,
title = {Model Selection in Utility-Maximizing Binary Prediction},
author = {Jiun-Hua Su},
journal= {arXiv preprint arXiv:1903.00716},
year = {2021}
}
Comments
Accepted by the Journal of Econometrics