Computer Science > Machine Learning
[Submitted on 10 Feb 2020 (v1), last revised 3 Jun 2022 (this version, v2)]
Title:Rethinking Class-Prior Estimation for Positive-Unlabeled Learning
View PDFAbstract:Given only positive (P) and unlabeled (U) data, PU learning can train a binary classifier without any negative data. It has two building blocks: PU class-prior estimation (CPE) and PU classification; the latter has been well studied while the former has received less attention. Hitherto, the distributional-assumption-free CPE methods rely on a critical assumption that the support of the positive data distribution cannot be contained in the support of the negative data distribution. If this is violated, those CPE methods will systematically overestimate the class prior; it is even worse that we cannot verify the assumption based on the data. In this paper, we rethink CPE for PU learning-can we remove the assumption to make CPE always valid? We show an affirmative answer by proposing Regrouping CPE (ReCPE) that builds an auxiliary probability distribution such that the support of the positive data distribution is never contained in the support of the negative data distribution. ReCPE can work with any CPE method by treating it as the base method. Theoretically, ReCPE does not affect its base if the assumption already holds for the original probability distribution; otherwise, it reduces the positive bias of its base. Empirically, ReCPE improves all state-of-the-art CPE methods on various datasets, implying that the assumption has indeed been violated here.
Submission history
From: Tongliang Liu [view email][v1] Mon, 10 Feb 2020 11:57:30 UTC (60 KB)
[v2] Fri, 3 Jun 2022 07:22:04 UTC (352 KB)
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