High dimensional binary classification under label shift: phase transition and regularization

Label Shift has been widely believed to be harmful to the generalization performance of machine learning models. Researchers have proposed many approaches to mitigate the impact of the label shift, e.g., balancing the training data. However, these methods often consider the underparametrized regime,...

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Veröffentlicht in:Sampling theory, signal processing, and data analysis signal processing, and data analysis, 2023-12, Vol.21 (2), Article 32
Hauptverfasser: Cheng, Jiahui, Chen, Minshuo, Liu, Hao, Zhao, Tuo, Liao, Wenjing
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Sprache:eng
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Zusammenfassung:Label Shift has been widely believed to be harmful to the generalization performance of machine learning models. Researchers have proposed many approaches to mitigate the impact of the label shift, e.g., balancing the training data. However, these methods often consider the underparametrized regime, where the sample size is much larger than the data dimension. The research under the overparametrized regime is very limited. To bridge this gap, we propose a new asymptotic analysis of the Fisher Linear Discriminant classifier for binary classification with label shift. Specifically, we prove that there exists a phase transition phenomenon: Under certain overparametrized regime, the classifier trained using imbalanced data outperforms the counterpart with reduced balanced data. Moreover, we investigate the impact of regularization to the label shift: The aforementioned phase transition vanishes as the regularization becomes strong.
ISSN:2730-5716
2730-5724
DOI:10.1007/s43670-023-00071-9