Robust estimators in a generalized partly linear regression model under monotony constraints

In this paper, we consider the situation in which the observations follow an isotonic generalized partly linear model. Under this model, the mean of the responses is modelled, through a link function, linearly on some covariates and nonparametrically on an univariate regressor in such a way that the...

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Autores principales: Boente, G., Rodriguez, D., Vena, P.
Formato: JOUR
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Acceso en línea:http://hdl.handle.net/20.500.12110/paper_11330686_v_n_p_Boente
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spelling todo:paper_11330686_v_n_p_Boente2023-10-03T16:07:58Z Robust estimators in a generalized partly linear regression model under monotony constraints Boente, G. Rodriguez, D. Vena, P. B-splines Deviance Isotonic regression Partial linear models Robust estimation In this paper, we consider the situation in which the observations follow an isotonic generalized partly linear model. Under this model, the mean of the responses is modelled, through a link function, linearly on some covariates and nonparametrically on an univariate regressor in such a way that the nonparametric component is assumed to be a monotone function. A class of robust estimates for the monotone nonparametric component and for the regression parameter, related to the linear one, is defined. The robust estimators are based on a spline approach combined with a score function which bounds large values of the deviance. As an application, we consider the isotonic partly linear log-Gamma regression model. Under regularity conditions, we derive consistency results for the nonparametric function estimators as well as consistency and asymptotic distribution results for the regression parameter estimators. Besides, the empirical influence function allows us to study the sensitivity of the estimators to anomalous observations. Through a Monte Carlo study, we investigate the performance of the proposed estimators under a partly linear log-Gamma regression model with increasing nonparametric component. The proposal is illustrated on a real data set. © 2019, Sociedad de Estadística e Investigación Operativa. JOUR info:eu-repo/semantics/openAccess http://creativecommons.org/licenses/by/2.5/ar http://hdl.handle.net/20.500.12110/paper_11330686_v_n_p_Boente
institution Universidad de Buenos Aires
institution_str I-28
repository_str R-134
collection Biblioteca Digital - Facultad de Ciencias Exactas y Naturales (UBA)
topic B-splines
Deviance
Isotonic regression
Partial linear models
Robust estimation
spellingShingle B-splines
Deviance
Isotonic regression
Partial linear models
Robust estimation
Boente, G.
Rodriguez, D.
Vena, P.
Robust estimators in a generalized partly linear regression model under monotony constraints
topic_facet B-splines
Deviance
Isotonic regression
Partial linear models
Robust estimation
description In this paper, we consider the situation in which the observations follow an isotonic generalized partly linear model. Under this model, the mean of the responses is modelled, through a link function, linearly on some covariates and nonparametrically on an univariate regressor in such a way that the nonparametric component is assumed to be a monotone function. A class of robust estimates for the monotone nonparametric component and for the regression parameter, related to the linear one, is defined. The robust estimators are based on a spline approach combined with a score function which bounds large values of the deviance. As an application, we consider the isotonic partly linear log-Gamma regression model. Under regularity conditions, we derive consistency results for the nonparametric function estimators as well as consistency and asymptotic distribution results for the regression parameter estimators. Besides, the empirical influence function allows us to study the sensitivity of the estimators to anomalous observations. Through a Monte Carlo study, we investigate the performance of the proposed estimators under a partly linear log-Gamma regression model with increasing nonparametric component. The proposal is illustrated on a real data set. © 2019, Sociedad de Estadística e Investigación Operativa.
format JOUR
author Boente, G.
Rodriguez, D.
Vena, P.
author_facet Boente, G.
Rodriguez, D.
Vena, P.
author_sort Boente, G.
title Robust estimators in a generalized partly linear regression model under monotony constraints
title_short Robust estimators in a generalized partly linear regression model under monotony constraints
title_full Robust estimators in a generalized partly linear regression model under monotony constraints
title_fullStr Robust estimators in a generalized partly linear regression model under monotony constraints
title_full_unstemmed Robust estimators in a generalized partly linear regression model under monotony constraints
title_sort robust estimators in a generalized partly linear regression model under monotony constraints
url http://hdl.handle.net/20.500.12110/paper_11330686_v_n_p_Boente
work_keys_str_mv AT boenteg robustestimatorsinageneralizedpartlylinearregressionmodelundermonotonyconstraints
AT rodriguezd robustestimatorsinageneralizedpartlylinearregressionmodelundermonotonyconstraints
AT venap robustestimatorsinageneralizedpartlylinearregressionmodelundermonotonyconstraints
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