Diagnostic checking for multivariate parametric models is investigated in this article. A nonparametric Monte Carlo Test (NMCT) procedure is proposed. This Monte Carlo approximation is easy to implement and can automatically make any test procedure scale-invariant even when the test statistic is not scale-invariant. With it we do not need plug-in estimation of the asymptotic covariance matrix that is used to normalize test statistic and then the power performance can be enhanced. The consistency of NMCT approximation is proved. For comparison, we also extend the score type test to one-dimensional cases. NMCT can also be applied to diverse problems such as a classical problem for which we test whether or not certain covariables in linear mod...
One of the main problems of statistical inference in Structural Equation Modeling (SEM) is the overa...
Statistical analysis frequently relies on the assumption of normality. Though normality may often be...
<p>This work is concerned with testing the population mean vector of nonnormal high-dimensional mult...
AbstractDiagnostic checking for multivariate parametric models is investigated in this article. A no...
AbstractDiagnostic checking for multivariate parametric models is investigated in this article. A no...
AbstractA Monte Carlo power study of 10 multivariate normality goodness-of-fit tests is presented. F...
AbstractA Monte Carlo power study of 10 multivariate normality goodness-of-fit tests is presented. F...
2012-11-22We introduce three nonparametric multivariate methods for testing the elements of the regr...
Statistical diagnostic testing is often associated with erratic conclusions due to the fact that a t...
In this thesis, a new univariate-multivariate portmanteau test is derived. The proposed test statist...
A Monte Carlo power study of 10 multivariate normality goodness-of-fit tests is presented. First, mu...
SIGLEAvailable from TIB Hannover: RR 9140(2000,6) / FIZ - Fachinformationszzentrum Karlsruhe / TIB -...
In this article, we derive the asymptotic distribution of residual autocovariance and autocorrelatio...
In the context of multivariate linear regression (MLR) models, it is well known that commonly employ...
A common problem in regression analysis (linear or nonlinear) is assessing the lack-of-fit. Existing...
One of the main problems of statistical inference in Structural Equation Modeling (SEM) is the overa...
Statistical analysis frequently relies on the assumption of normality. Though normality may often be...
<p>This work is concerned with testing the population mean vector of nonnormal high-dimensional mult...
AbstractDiagnostic checking for multivariate parametric models is investigated in this article. A no...
AbstractDiagnostic checking for multivariate parametric models is investigated in this article. A no...
AbstractA Monte Carlo power study of 10 multivariate normality goodness-of-fit tests is presented. F...
AbstractA Monte Carlo power study of 10 multivariate normality goodness-of-fit tests is presented. F...
2012-11-22We introduce three nonparametric multivariate methods for testing the elements of the regr...
Statistical diagnostic testing is often associated with erratic conclusions due to the fact that a t...
In this thesis, a new univariate-multivariate portmanteau test is derived. The proposed test statist...
A Monte Carlo power study of 10 multivariate normality goodness-of-fit tests is presented. First, mu...
SIGLEAvailable from TIB Hannover: RR 9140(2000,6) / FIZ - Fachinformationszzentrum Karlsruhe / TIB -...
In this article, we derive the asymptotic distribution of residual autocovariance and autocorrelatio...
In the context of multivariate linear regression (MLR) models, it is well known that commonly employ...
A common problem in regression analysis (linear or nonlinear) is assessing the lack-of-fit. Existing...
One of the main problems of statistical inference in Structural Equation Modeling (SEM) is the overa...
Statistical analysis frequently relies on the assumption of normality. Though normality may often be...
<p>This work is concerned with testing the population mean vector of nonnormal high-dimensional mult...