Principal weighted logistic regression for sufficient dimension reduction in binary classification

被引:0
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作者
Boyoung Kim
Seung Jun Shin
机构
[1] Korea University,Department of Statistics
关键词
primary 62H30; secondary 62G99; Binary classification; Model-free feature extraction; Weighted logistic regression;
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摘要
Sufficient dimension reduction (SDR) is a popular supervised machine learning technique that reduces the predictor dimension and facilitates subsequent data analysis in practice. In this article, we propose principal weighted logistic regression (PWLR), an efficient SDR method in binary classification where inverse-regression-based SDR methods often suffer. We first develop linear PWLR for linear SDR and study its asymptotic properties. We then extend it to nonlinear SDR and propose the kernel PWLR. Evaluations with both simulated and real data show the promising performance of the PWLR for SDR in binary classification.
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页码:194 / 206
页数:12
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