We generalize a recent class of tests for univariate normality that are based on the empirical moment generating function to the multivariate setting, thus obtaining a class of affine invariant, consistent and easy-to-use goodness-of-fit tests for multinormality. The test statistics are suitably weighted L2-statistics, and we provide their asymptotic behavior both for i.i.d. observations as well as in the context of testing that the innovation distribution of a multivariate GARCH model is Gaussian. We study the finite-sample behavior of the new tests, compare the criteria with alternative existing procedures, and apply the new procedure to a data set of monthly log returns.Ministerio de Economía y Competitividad (MINECO). Españ
A data-driven score test of fit for testing the conditional distribution within the class of station...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
We derive Lagrange Multiplier and Likelihood Ratio specifi cation tests for the null hypotheses of m...
We use a system of first-order partial differential equations that characterize the moment generatin...
We study a novel class of affine-invariant and consistent tests for multivariate normality. The test...
AbstractWe propose a new class of rotation invariant and consistent goodness-of-fit tests for multiv...
AbstractLetX1, …, Xnbe i.i.d. randomd-vectors,d⩾1, with sample meanXand sample covariance matrixS. F...
Testing for normality is of paramount importance in many areas of science since the Gaussian distrib...
AbstractIn this paper we study the problem of testing the null hypothesis that errors from k indepen...
Statistical analysis frequently relies on the assumption of normality. Though normality may often be...
We study a novel class of affine invariant and consistent tests for normality in any dimension in an...
This paper derives asymptotic normality of a class of M-estimators in the generalized autoregressive...
Multivariate statistical methods often require the assumption of multivariate normality. The purpose...
Methods of assessing the degree to which multivariate data deviate from multinormality are discussed...
AbstractIn this paper we investigate performances of the test of multinormality introduced by Malkov...
A data-driven score test of fit for testing the conditional distribution within the class of station...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
We derive Lagrange Multiplier and Likelihood Ratio specifi cation tests for the null hypotheses of m...
We use a system of first-order partial differential equations that characterize the moment generatin...
We study a novel class of affine-invariant and consistent tests for multivariate normality. The test...
AbstractWe propose a new class of rotation invariant and consistent goodness-of-fit tests for multiv...
AbstractLetX1, …, Xnbe i.i.d. randomd-vectors,d⩾1, with sample meanXand sample covariance matrixS. F...
Testing for normality is of paramount importance in many areas of science since the Gaussian distrib...
AbstractIn this paper we study the problem of testing the null hypothesis that errors from k indepen...
Statistical analysis frequently relies on the assumption of normality. Though normality may often be...
We study a novel class of affine invariant and consistent tests for normality in any dimension in an...
This paper derives asymptotic normality of a class of M-estimators in the generalized autoregressive...
Multivariate statistical methods often require the assumption of multivariate normality. The purpose...
Methods of assessing the degree to which multivariate data deviate from multinormality are discussed...
AbstractIn this paper we investigate performances of the test of multinormality introduced by Malkov...
A data-driven score test of fit for testing the conditional distribution within the class of station...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
We derive Lagrange Multiplier and Likelihood Ratio specifi cation tests for the null hypotheses of m...