We develop a new method for assessing the adequacy of a smooth regression function, based on nonparametric regression and the bootstrap. Our methodology allows users to detect systematic misfit and to test hypotheses of the form “the proposed smooth regression model is not significantly different from the smooth regression model that generated these data”. We also provide confidence bands on the location of nonparametric regression estimates assuming that the proposed regression function is true, allowing users to pinpoint regions of misfit. We illustrate the application of the new method, using local linear nonparametric regression, both where an error model is assumed, and where the error model is an unknown nonstationary function of the ...
Testing for parametric structure is an important issue in non-parametric regression analysis. A stan...
This paper presents a goodness-of-fit test for parametric regression models with scalar response and...
AbstractWe describe a bootstrap method for estimating mean squared error and smoothing parameter in ...
We develop a new method for assessing the adequacy of a smooth regression function, based on nonpara...
We propose a new nonparametric method for testing the parametric form of a regression function in th...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
SIGLEBibliothek Weltwirtschaft Kiel C 145191 / FIZ - Fachinformationszzentrum Karlsruhe / TIB - Tech...
Hypothesis testing, Regression models, Nonparametric estimators, Dependent data, 62G08, 62G09, 62G10...
SIGLETIB: RO 2708 (71) / FIZ - Fachinformationszzentrum Karlsruhe / TIB - Technische Informationsbib...
The aim of this work is to propose and analyze the behavior of a test statistic to assess a parametr...
This paper adapts an already existing nonparametric hypothesis test to the bootstrap framework. The...
In this study, parametric bootstrap methods are used to test for spatial non-stationarity in the coe...
Given n iid observation i(X,,Y):i=1,2,...,n) with unknown re ssion function m(.) = E(Y,/X,=.). It al...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
Testing for parametric structure is an important issue in non-parametric regression analysis. A stan...
This paper presents a goodness-of-fit test for parametric regression models with scalar response and...
AbstractWe describe a bootstrap method for estimating mean squared error and smoothing parameter in ...
We develop a new method for assessing the adequacy of a smooth regression function, based on nonpara...
We propose a new nonparametric method for testing the parametric form of a regression function in th...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
SIGLEBibliothek Weltwirtschaft Kiel C 145191 / FIZ - Fachinformationszzentrum Karlsruhe / TIB - Tech...
Hypothesis testing, Regression models, Nonparametric estimators, Dependent data, 62G08, 62G09, 62G10...
SIGLETIB: RO 2708 (71) / FIZ - Fachinformationszzentrum Karlsruhe / TIB - Technische Informationsbib...
The aim of this work is to propose and analyze the behavior of a test statistic to assess a parametr...
This paper adapts an already existing nonparametric hypothesis test to the bootstrap framework. The...
In this study, parametric bootstrap methods are used to test for spatial non-stationarity in the coe...
Given n iid observation i(X,,Y):i=1,2,...,n) with unknown re ssion function m(.) = E(Y,/X,=.). It al...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
Testing for parametric structure is an important issue in non-parametric regression analysis. A stan...
This paper presents a goodness-of-fit test for parametric regression models with scalar response and...
AbstractWe describe a bootstrap method for estimating mean squared error and smoothing parameter in ...