Bottlenecks of binary classification from positive and unlabeled data (PU classification) are the requirements that given unlabeled patterns are drawn from the same distribution as the test distribution, and the penalty of the false positive error is identical to the false negative error. However, such requirements are often not fulfilled in practice. In this paper, we generalize PU classification to the class prior shift and asymmetric error scenarios. Based on the analysis of the Bayes optimal classifier, we show that given a test class prior, PU classification under class prior shift is equivalent to PU classification with asymmetric error. Then, we propose two different frameworks to handle these problems, namely, a risk minimization framework and density ratio estimation framework. Finally, we demonstrate the effectiveness of the proposed frameworks through experiments.
CITATION STYLE
Charoenphakdee, N., & Sugiyama, M. (2019). Positive-unlabeled classification under class prior shift and asymmetric error. In SIAM International Conference on Data Mining, SDM 2019 (pp. 271–278). Society for Industrial and Applied Mathematics Publications. https://doi.org/10.1137/1.9781611975673.31
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