Propensity-Scored Probabilistic Label Trees

April 15, 2021
Abstract

Extreme multi-label classification (XMLC) refers to the task of tagging instances with small subsets of relevant labels coming from an extremely large set of all possible labels. Recently, XMLC has been widely applied to diverse web applications such as automatic content labeling, online advertising, or recommendation systems. In such environments, label distribution is often highly imbalanced, consisting mostly of very rare tail labels, and relevant labels can be missing. As a remedy to these problems, the propensity model has been introduced and applied within several XMLC algorithms. In this work, we focus on the problem of optimal predictions under this model for probabilistic label trees, a popular approach for XMLC problems. We introduce an inference procedure, based on the A*-search algorithm, that efficiently finds the optimal solution, assuming that all probabilities and propensities are known. We demonstrate the attractiveness of this approach in a wide empirical study on popular XMLC benchmark datasets.

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Publication Type
Paper
Conference / Journal Name
SIGIR 2021 (short paper)

BibTeX


@inproceedings{
    author = {},
    title = {‌Propensity-Scored Probabilistic Label Trees‌},
    booktitle = {Proceedings of SIGIR 2021 (short paper)‌},
    year = {‌2021‌}
}