Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric Regression

Mixed estimators in nonparametric regression have been developed in models with one response. The biresponse cases with different patterns among predictor variables that tend to be mixed estimators are often encountered. Therefore, in this article, we propose a biresponse nonparametric regression mo...

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Main Authors: Dyah P. Rahmawati, I. N. Budiantara, Dedy D. Prastyo, Made A. D. Octavanny
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:International Journal of Mathematics and Mathematical Sciences
Online Access:http://dx.doi.org/10.1155/2021/6611084
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spelling doaj-83626877671e4c7d88515ad00c3db6902021-03-22T00:04:15ZengHindawi LimitedInternational Journal of Mathematics and Mathematical Sciences1687-04252021-01-01202110.1155/2021/6611084Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric RegressionDyah P. Rahmawati0I. N. Budiantara1Dedy D. Prastyo2Made A. D. Octavanny3Department of StatisticsDepartment of StatisticsDepartment of StatisticsDepartment of StatisticsMixed estimators in nonparametric regression have been developed in models with one response. The biresponse cases with different patterns among predictor variables that tend to be mixed estimators are often encountered. Therefore, in this article, we propose a biresponse nonparametric regression model with mixed spline smoothing and kernel estimators. This mixed estimator is suitable for modeling biresponse data with several patterns (response vs. predictors) that tend to change at certain subintervals such as the spline smoothing pattern, and other patterns that tend to be random are commonly modeled using kernel regression. The mixed estimator is obtained through two-stage estimation, i.e., penalized weighted least square (PWLS) and weighted least square (WLS). Furthermore, the proposed biresponse modeling with mixed estimators is validated using simulation data. This estimator is also applied to the percentage of the poor population and human development index data. The results show that the proposed model can be appropriately implemented and gives satisfactory results.http://dx.doi.org/10.1155/2021/6611084
collection DOAJ
language English
format Article
sources DOAJ
author Dyah P. Rahmawati
I. N. Budiantara
Dedy D. Prastyo
Made A. D. Octavanny
spellingShingle Dyah P. Rahmawati
I. N. Budiantara
Dedy D. Prastyo
Made A. D. Octavanny
Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric Regression
International Journal of Mathematics and Mathematical Sciences
author_facet Dyah P. Rahmawati
I. N. Budiantara
Dedy D. Prastyo
Made A. D. Octavanny
author_sort Dyah P. Rahmawati
title Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric Regression
title_short Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric Regression
title_full Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric Regression
title_fullStr Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric Regression
title_full_unstemmed Mixed Spline Smoothing and Kernel Estimator in Biresponse Nonparametric Regression
title_sort mixed spline smoothing and kernel estimator in biresponse nonparametric regression
publisher Hindawi Limited
series International Journal of Mathematics and Mathematical Sciences
issn 1687-0425
publishDate 2021-01-01
description Mixed estimators in nonparametric regression have been developed in models with one response. The biresponse cases with different patterns among predictor variables that tend to be mixed estimators are often encountered. Therefore, in this article, we propose a biresponse nonparametric regression model with mixed spline smoothing and kernel estimators. This mixed estimator is suitable for modeling biresponse data with several patterns (response vs. predictors) that tend to change at certain subintervals such as the spline smoothing pattern, and other patterns that tend to be random are commonly modeled using kernel regression. The mixed estimator is obtained through two-stage estimation, i.e., penalized weighted least square (PWLS) and weighted least square (WLS). Furthermore, the proposed biresponse modeling with mixed estimators is validated using simulation data. This estimator is also applied to the percentage of the poor population and human development index data. The results show that the proposed model can be appropriately implemented and gives satisfactory results.
url http://dx.doi.org/10.1155/2021/6611084
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