Convolution type estimators for nonparametric regression (Q1113583)
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scientific article; zbMATH DE number 4082735
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Convolution type estimators for nonparametric regression |
scientific article; zbMATH DE number 4082735 |
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Convolution type estimators for nonparametric regression (English)
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1988
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Convolution type kernel estimators such as the Priestley-Chao estimator have been discussed by several authors in the fixed design regression model \(Y_ i=g(t_ i)+\epsilon_ i\), where \(\epsilon_ i\) are uncorrelated random errors, \(t_ i\) are fixed design points where measurements are made, and g is the function to be estimated from the noisy measurements \(Y_ i\). Using properties of order statistics and concomitants, we derive the asymptotic mean squared error of these estimators in the random design case where given i.i.d. bivariate observations \((X_ i,Y_ i)\), \(i=1,...,n\), the aim is to estimate the regression function \(m(x)=E(Y| X=x)\). The comparison with the well- known quotient type Nadaraya-Watson kernel estimators shows that convolution type estimators have a bias behavior which corresponds to that in the fixed design case. This makes possible the straightforward extension to the estimation of derivatives.
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derivatives
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Convolution type kernel estimators
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Priestley-Chao estimator
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fixed design regression model
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order statistics
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concomitants
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asymptotic mean squared error
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random design case
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quotient type Nadaraya-Watson kernel estimators
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