Prediction and outlier detection in classification problems
Abstract
We consider the multi-class classification problem when the training data and the out-of-sample test data may have different distributions and propose a method called BCOPS (balanced and conformal optimized prediction sets). BCOPS constructs a prediction set as a subset of class labels, possibly empty. It tries to optimize the out-of-sample performance, aiming to include the correct class as often as possible, but also detecting outliers , for which the method returns no prediction (corresponding to equal to the empty set). The proposed method combines supervised-learning algorithms with the method of conformal prediction to minimize a misclassification loss averaged over the out-of-sample distribution. The constructed prediction sets have a finite-sample coverage guarantee without distributional assumptions. We also propose a method to estimate the outlier detection rate of a given method. We prove asymptotic consistency and optimality of our proposals under suitable assumptions and illustrate our methods on real data examples.
Cite
@article{arxiv.1905.04396,
title = {Prediction and outlier detection in classification problems},
author = {Leying Guan and Rob Tibshirani},
journal= {arXiv preprint arXiv:1905.04396},
year = {2019}
}
Comments
22 pages; 8 figures