AbstractWe propose likelihood and restricted likelihood ratio tests for goodness-of-fit of nonlinear regression. The first-order Taylor approximation around the MLE of the regression parameters is used to approximate the null hypothesis and the alternative is modeled nonparametrically using penalized splines. The exact finite sample distribution of the test statistics is obtained for the linear model approximation and can be easily simulated. We recommend using the restricted likelihood instead of the likelihood ratio test because restricted maximum-likelihood estimates are not as severely biased as the maximum-likelihood estimates in the penalized splines framework
Abstract: We examine a test of a nonparametric regression function based on pe-nalized spline smooth...
We propose a specification test of a parametrically specified nonlinear model against a weakly speci...
• This paper develops statistical inference in linear models, dealing with the theory of maximum lik...
We propose likelihood and restricted likelihood ratio tests for goodness-of-fit of nonlinear regress...
AbstractWe propose likelihood and restricted likelihood ratio tests for goodness-of-fit of nonlinear...
Penalized regression spline models afford a simple mixed model representation in which variance comp...
Penalised-spline-based additive models allow a simple mixed model representation where the variance ...
AbstractBerk and Jones (Z. Wahrsch. Verw. Gebiete 47 (1979) 47) described a nonparametric likelihood...
Parameterization is an useful approach to construct a goodness of fit test based on parametric appro...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
Penalized spline-based additive models allow a simple mixed model representation where the variance ...
The problem of testing a proposed nonlinear multiresponse regression function for lack of fit is con...
Abstract. It is shown that the Lack-of-Fit test can be considered as the likelihood ratio test on th...
summary:In weakly nonlinear regression model a weakly nonlinear hypothesis can be tested by linear m...
Abstract: We examine a test of a nonparametric regression function based on pe-nalized spline smooth...
We propose a specification test of a parametrically specified nonlinear model against a weakly speci...
• This paper develops statistical inference in linear models, dealing with the theory of maximum lik...
We propose likelihood and restricted likelihood ratio tests for goodness-of-fit of nonlinear regress...
AbstractWe propose likelihood and restricted likelihood ratio tests for goodness-of-fit of nonlinear...
Penalized regression spline models afford a simple mixed model representation in which variance comp...
Penalised-spline-based additive models allow a simple mixed model representation where the variance ...
AbstractBerk and Jones (Z. Wahrsch. Verw. Gebiete 47 (1979) 47) described a nonparametric likelihood...
Parameterization is an useful approach to construct a goodness of fit test based on parametric appro...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
Penalized spline-based additive models allow a simple mixed model representation where the variance ...
The problem of testing a proposed nonlinear multiresponse regression function for lack of fit is con...
Abstract. It is shown that the Lack-of-Fit test can be considered as the likelihood ratio test on th...
summary:In weakly nonlinear regression model a weakly nonlinear hypothesis can be tested by linear m...
Abstract: We examine a test of a nonparametric regression function based on pe-nalized spline smooth...
We propose a specification test of a parametrically specified nonlinear model against a weakly speci...
• This paper develops statistical inference in linear models, dealing with the theory of maximum lik...