Selection by Prediction with Conformal P-Values
Abstract
Decision making or scientific discovery pipelines such as job hiring and drug discovery often involve multiple stages: before any resource-intensive step, there is often an initial screening that uses predictions from a machine learning model to shortlist a few candidates from a large pool. We study screening procedures that aim to select candidates whose unobserved outcomes exceed user-specified values. We develop a method that wraps around any prediction model to produce a subset of candidates while controlling the proportion of falsely selected units. Building upon the conformal inference framework, our method first constructs p-values that quantify the statistical evidence for large outcomes; it then determines the shortlist by comparing the p-values to a threshold introduced in the multiple testing literature. In many cases, the procedure selects candidates whose predictions are above a data-dependent threshold. Our theoretical guarantee holds under mild exchangeability conditions on the samples, generalizing existing results on multiple conformal p-values. We demonstrate the empirical performance of our method via simulations, and apply it to job hiring and drug discovery datasets.
Cite
Text
Jin and Candes. "Selection by Prediction with Conformal P-Values." Journal of Machine Learning Research, 2023.Markdown
[Jin and Candes. "Selection by Prediction with Conformal P-Values." Journal of Machine Learning Research, 2023.](https://mlanthology.org/jmlr/2023/jin2023jmlr-selection/)BibTeX
@article{jin2023jmlr-selection,
title = {{Selection by Prediction with Conformal P-Values}},
author = {Jin, Ying and Candes, Emmanuel J.},
journal = {Journal of Machine Learning Research},
year = {2023},
pages = {1-41},
volume = {24},
url = {https://mlanthology.org/jmlr/2023/jin2023jmlr-selection/}
}