In this paper we consider the problem of testing (a) sphericity and (b) intraclass covariance structure under a Growth Curve model. The maximum likelihood estimator (MLE) for the mean in a Growth Curve model is a weighted estimator with the inverse of the sample covariance matrix which is unstable for large p close to N and singular for p larger than N. The MLE for the covariance matrix is based on the MLE for the mean, which can be very poor for p close to N. For both structures (a) and (b), we modify the MLE for the mean to an unweighted estimator and based on this estimator we propose a new estimator for the covariance matrix. This new estimator leads to new tests for (a) and (b). We also propose two other tests for each structure, which...
The growth curve model introduced by Potthoff & Roy (1964) is a generalization of the multivaria...
Growth-curve models are generalized multivariate analysis-of-variance models. The basic idea of the ...
The field of statistics is becoming increasingly more important as the amount of data in the world g...
In this article, we consider the problem of testing (a) sphericity and (b) intraclass covariance str...
AbstractThis paper considers three types of problems: (i) the problem of independence of two sets, (...
The growth curve model (GCM) has been widely used in longitudinal studies and repeated measures. Mos...
In growth curve studies, measurements are made on individuals over a moderately large period of time...
In this paper, the implementation of algorithm proposed in (Nzabanita, J., et al. 2012) for some kno...
AbstractEstimation of parameters in the classical Growth Curve model, when the covariance matrix has...
Estimation of parameters in the classical Growth Curve model when the covariance matrix has some spe...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
In this paper we propose a new test procedure for sphericity of the covariance matrix when the dimen...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
Statisticians are interested in testing the structure of covariance matrices, especially under the h...
A trace test for the mean parameters of the growth curve model is proposed. It is constructed using ...
The growth curve model introduced by Potthoff & Roy (1964) is a generalization of the multivaria...
Growth-curve models are generalized multivariate analysis-of-variance models. The basic idea of the ...
The field of statistics is becoming increasingly more important as the amount of data in the world g...
In this article, we consider the problem of testing (a) sphericity and (b) intraclass covariance str...
AbstractThis paper considers three types of problems: (i) the problem of independence of two sets, (...
The growth curve model (GCM) has been widely used in longitudinal studies and repeated measures. Mos...
In growth curve studies, measurements are made on individuals over a moderately large period of time...
In this paper, the implementation of algorithm proposed in (Nzabanita, J., et al. 2012) for some kno...
AbstractEstimation of parameters in the classical Growth Curve model, when the covariance matrix has...
Estimation of parameters in the classical Growth Curve model when the covariance matrix has some spe...
This thesis is concerned about statistical inference for the population covariance matrix in the hig...
In this paper we propose a new test procedure for sphericity of the covariance matrix when the dimen...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
Statisticians are interested in testing the structure of covariance matrices, especially under the h...
A trace test for the mean parameters of the growth curve model is proposed. It is constructed using ...
The growth curve model introduced by Potthoff & Roy (1964) is a generalization of the multivaria...
Growth-curve models are generalized multivariate analysis-of-variance models. The basic idea of the ...
The field of statistics is becoming increasingly more important as the amount of data in the world g...