International Journal of applied mathematics and computer science

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Paper details

Number 3 - September 2025
Volume 35 - 2025

Accounting for label shift of positive unlabeled data under selection bias

Jan Mielniczuk, Adam Wawrzeńczyk

Abstract
We consider the scenario when two samples of positive unlabeled (PU) data are available and for the second sample the change in prior probability of classes occurs while distributions of predictors in classes remain the same (label shift setting). The selection of positive elements may be object-dependent. We study the properties of the underlying probabilistic structure under the novel augmented PU scenario, proving in particular that label shift occurs also for unlabeled populations. We introduce and investigate an estimator of prior probability for label-shifted population. Furthermore, in this case we construct and analyze behavior of Bayes classifier in this setting. It turns out to be a Bayes classifier for the unlabeled class with a modified threshold. This gives rise to its three empirical counterparts which are compared on benchmark data sets.

Keywords
positive unlabeled learning, label shift, augmented positive unlabeled data, selection bias, Bayes classifier, accuracy.

DOI
10.61822/amcs-2025-0036