High-dimensional local polynomial regression with variable selection and dimension reduction

被引:0
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作者
Kin Yap Cheung
Stephen M. S. Lee
机构
[1] The University of Hong Kong,Department of Statistics and Actuarial Science
来源
Statistics and Computing | 2024年 / 34卷
关键词
Bandwidth; Dimension reduction; High-dimensional; Local polynomial regression; Variable selection;
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学科分类号
摘要
Variable selection and dimension reduction have been considered in nonparametric regression for improving the precision of estimation, via the formulation of a semiparametric multiple index model. However, most existing methods are ill-equipped to cope with a high-dimensional setting where the number of variables may grow exponentially fast with sample size. We propose a new procedure for simultaneous variable selection and dimension reduction in high-dimensional nonparametric regression problems. It consists essentially of penalised local polynomial regression, with the bandwidth matrix regularised to facilitate variable selection, dimension reduction and optimal estimation at the oracle convergence rate, all in one go. Unlike most existing methods, the proposed procedure does not require explicit bandwidth selection or an additional step of dimension determination using techniques like cross-validation or principal components. Empirical performance of the procedure is illustrated with both simulated and real data examples.
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