Two cross-validation criteria for SIR\({}_\alpha\) and PSIR\({}_\alpha\) methods in view of prediction (Q1887233)
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scientific article; zbMATH DE number 2118522
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Two cross-validation criteria for SIR\({}_\alpha\) and PSIR\({}_\alpha\) methods in view of prediction |
scientific article; zbMATH DE number 2118522 |
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Two cross-validation criteria for SIR\({}_\alpha\) and PSIR\({}_\alpha\) methods in view of prediction (English)
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24 November 2004
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The sliced inverse regression technique SIR and its ``robustified'' version PSIR for fitting the single-index regression model \(y=f(x^\top\beta,\varepsilon)\) are considered. (Here \(f\) is an unknown link function to be estimated nonparametrically, \(x^\top\beta\) is the index.) The authors discuss the mixed SIR-I and SIR-II method, called SIR\({}_\alpha\) and PSIR\({}_\alpha\). Cross-validation criteria for the choice of the mixing parameter \(\alpha\) and the bandwidth in the Nadaraya-Watson estimator for \(f\) are proposed. Simulation results are presented for the model \(y=10+(x^\top\beta +C)^2+\varepsilon\), with \(x\) having standard Gaussian distribution in \(R^5\).
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sliced inverse regression
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bandwidth selection
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Nadaraya-Watson estimator
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mixed SIR
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single index regression
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