The Asymptotic Mean Squared Error of L-smoothing Splines
نویسنده
چکیده
We establish the asymptotical equivalence between L-spline smoothing and kernel estimation. The equivalent kernel is used to derive the asymptotic mean squared error of the L-smoothing spline estimator. The paper extends the corresponding results for polynomial spline smoothing.
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