This paper proposes a new conditional mean test to assess the validity of binary and fractional parametric regression models. The new test checks the joint significance of two simple functions of the fitted index and is based on a very flexible parametric generalization of the postulated model. A Monte Carlo study reveals a promising behaviour for the new test, which compares favourably with that of the well-known RESET test as well as with tests where the alternative model is non-parametric
We address the problem of testing for a parametric function of fixed effects in mixed models. We pro...
Several classical time series models can be written as a regression model between the components of ...
[[abstract]]The conditional mean of the response variable Y ggiven the covariates is usually modelle...
[[abstract]]We concern ourselves with the methods for testing the overall goodness of fit of a param...
International audienceThe objective is to construct a tool to test the validity of a regression mode...
We propose the use of the generalized fractional Bayes factor for testing fit in multinomial models....
We present asymptotic power-one tests of regression model functional form for heavy tailed time seri...
Mixed models, with both random and fixed effects, are most often estimated on the assump-tion that t...
We address the problem of checking the adequacy of a parametric functional form for the fixed effect...
In this paper, it will be shown that any conditional moment test of functional form of nonlinear reg...
Several new tests are proposed for examining the adequacy of a family of parametric models against l...
We propose the use of the generalized fractional Bayes factor for testing fit in multinomial models....
A test for neglected nonlinearities in regression models is proposed. The test is of the Davidson-Ma...
How well a proposed regression model fits the observed outcome data is a critical question. The ans...
We suggest a new method, with very wide applicability, for testing semiparametric hypotheses about f...
We address the problem of testing for a parametric function of fixed effects in mixed models. We pro...
Several classical time series models can be written as a regression model between the components of ...
[[abstract]]The conditional mean of the response variable Y ggiven the covariates is usually modelle...
[[abstract]]We concern ourselves with the methods for testing the overall goodness of fit of a param...
International audienceThe objective is to construct a tool to test the validity of a regression mode...
We propose the use of the generalized fractional Bayes factor for testing fit in multinomial models....
We present asymptotic power-one tests of regression model functional form for heavy tailed time seri...
Mixed models, with both random and fixed effects, are most often estimated on the assump-tion that t...
We address the problem of checking the adequacy of a parametric functional form for the fixed effect...
In this paper, it will be shown that any conditional moment test of functional form of nonlinear reg...
Several new tests are proposed for examining the adequacy of a family of parametric models against l...
We propose the use of the generalized fractional Bayes factor for testing fit in multinomial models....
A test for neglected nonlinearities in regression models is proposed. The test is of the Davidson-Ma...
How well a proposed regression model fits the observed outcome data is a critical question. The ans...
We suggest a new method, with very wide applicability, for testing semiparametric hypotheses about f...
We address the problem of testing for a parametric function of fixed effects in mixed models. We pro...
Several classical time series models can be written as a regression model between the components of ...
[[abstract]]The conditional mean of the response variable Y ggiven the covariates is usually modelle...