Estimation of adaptive parameters in a nonparametric regression
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Abstract
The researcher faces several problems when estimating the nonparametric regression functions as they depend heavily on the data and these estimates may be inaccurate, or there may be a problem in finding an efficient method that fits the nonparametric model, so the goal is to find the adaptive capabilities in the nonparametric regression by the “Goldenshluger-lepski” method Modern methods to increase the efficiency and accuracy of estimation through the use of adaptive estimators in non-parametric regression method . In this paper, adaptive estimations were processed in the nonparametric regression method through the use of kernel smoothing and spline. The adaptive "Goldenshluger-Lepski" was included, and to compare the estimation methods three criteria were used, namely (MSE , MAS, RMSE) to choose the best method after applying the procedure to the simulation in the R Package
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