We propose a new lack-of-fit test for quantile regression models that is suitable even with high-dimensional covariates. The test is based on the cumulative sum of residuals with respect to unidimensional linear projections of the covariates. The test adapts concepts proposed by Escanciano (Econometric Theory, 22, 2006) to cope with many covariates to the test proposed by He and Zhu (Journal of the American Statistical Association, 98, 2003). To approximate the critical values of the test, a wild bootstrap mechanism is used, similar to that proposed by Feng et al. (Biometrika, 98, 2011). An extensive simulation study was undertaken that shows the good performance of the new test, particularly when the dimension of the covariate is high. The...
A common problem in regression analysis (linear or nonlinear) is assessing the lack-of-fit. Existing...
We propose a framework for constructing goodness-of-fit tests in both low and high dimensional linea...
We consider a heteroscedastic regression model in which some of the regression coefficients are zero ...
A new lack-of-fit test for quantile regression models, that is suitable even with highdimensional co...
We address the issue of lack-of-fit testing for a parametric quantile regression. We propose a simpl...
A new lack-of-fit test for quantile regression models will be presented for the case where the respo...
The article considers a test of specification for quantile regressions. The test relies on the incre...
In regression experiments, to learn about the strength of the relationship between a covariate vecto...
Possibly misspecified linear quantile regression models are considered. A measure for assessing the ...
In this paper we consider (possibly misspecified) linear quantile regression models, and study a mea...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
Hypothesis tests in models whose dimension far exceeds the sample size can be formulated much like t...
Traditional tools for model diagnosis for Generalized Linear Model (GLM), such as deviance and Pears...
This paper introduces a specification testing procedure for quantile regression functions consistent...
There are many environments in econometrics which require nonseparable modeling of a structural dist...
A common problem in regression analysis (linear or nonlinear) is assessing the lack-of-fit. Existing...
We propose a framework for constructing goodness-of-fit tests in both low and high dimensional linea...
We consider a heteroscedastic regression model in which some of the regression coefficients are zero ...
A new lack-of-fit test for quantile regression models, that is suitable even with highdimensional co...
We address the issue of lack-of-fit testing for a parametric quantile regression. We propose a simpl...
A new lack-of-fit test for quantile regression models will be presented for the case where the respo...
The article considers a test of specification for quantile regressions. The test relies on the incre...
In regression experiments, to learn about the strength of the relationship between a covariate vecto...
Possibly misspecified linear quantile regression models are considered. A measure for assessing the ...
In this paper we consider (possibly misspecified) linear quantile regression models, and study a mea...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
Hypothesis tests in models whose dimension far exceeds the sample size can be formulated much like t...
Traditional tools for model diagnosis for Generalized Linear Model (GLM), such as deviance and Pears...
This paper introduces a specification testing procedure for quantile regression functions consistent...
There are many environments in econometrics which require nonseparable modeling of a structural dist...
A common problem in regression analysis (linear or nonlinear) is assessing the lack-of-fit. Existing...
We propose a framework for constructing goodness-of-fit tests in both low and high dimensional linea...
We consider a heteroscedastic regression model in which some of the regression coefficients are zero ...