Equivalent Nonparametric Regression Tests Based on Spline and Local Polynomial Smoothers
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چکیده
منابع مشابه
Assessing the equivalence of nonparametric regression tests based on spline and local polynomial smoothers
It is widely known that, in a certain sense, a smoothing spline estimate of the regression function is asymptotically equivalent to a kernel regression estimate. However, little information has been available about the equivalence between nonparametric regression tests, based on the smoothing spline and local polynomial regression methods. To assess their relative behaviors and to facilitate il...
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