Article
Computationally efficient goodness-of-fit tests for the error distribution in nonparametric regression
Author/s | Rivas Martínez, Gustavo Ignacio
Jiménez Gamero, María Dolores ![]() ![]() ![]() ![]() ![]() ![]() ![]() |
Department | Universidad de Sevilla. Departamento de Estadística e Investigación Operativa |
Date | 2018-01 |
Published in |
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Abstract | Several procedures have been proposed for testing goodness-of-fit to the error distribution in nonparametric regression models. The null distribution of the associated test statistics is usually approximated by means of a ... Several procedures have been proposed for testing goodness-of-fit to the error distribution in nonparametric regression models. The null distribution of the associated test statistics is usually approximated by means of a parametric bootstrap which, under certain conditions, provides a consistent estimator. This paper considers a goodness-of-fit test whose test statistic is an L2 norm of the difference between the empirical characteristic function of the residuals and a parametric estimate of the characteristic function in the null hypothesis. It is proposed to approximate the null distribution through a weighted bootstrap which also produces a consistent estimator of the null distribution but, from a computational point of view, is more efficient than the parametric bootstrap. |
Project ID. | MTM2014-55966-P
![]() MTM2017-89422-P ![]() |
Citation | Rivas Martínez, G.I. y Jiménez Gamero, M.D. (2018). Computationally efficient goodness-of-fit tests for the error distribution in nonparametric regression. Revstat Statistical Journal, 16 (1), 137-166. |
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