AbstractThe classical theory for testing the null hypothesis that a set of canonical correlation coefficients is zero leads to a chi-square test under the assumption of multi-normality. The test has been used in the context of dimension reduction. In this paper, we study the limiting distribution of the test statistic without the normality assumption, and obtain a necessary and sufficient condition for the chi-square limiting distribution to hold. Implications of the result are also discussed for the problem of dimension reduction
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
The Chi-Square test (χ2 test) is a family of tests based on a series of assumptions and is frequentl...
One test which is often used to investigate fit of the Rasch model to a dataset, is the Martin-Löf t...
AbstractThe classical theory for testing the null hypothesis that a set of canonical correlation coe...
We present a test for detecting `multivariate structure ' in data sets. This procedure consists...
Statisticians are often faced with the problem of choosing the appropriate dimensionality of a model...
AbstractIn canonical correlation analysis the number of nonzero population correlation coefficients ...
Zero-inflated distributions are common in statistical problems where there is interest in testing ho...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
We consider a recurrent event wherein the inter-event times are independent and identically distribu...
We present a preliminary test for nonlinear structure in large data sets. This procedure consists of...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
Some new upper bounds for noncentral chi-square cdf are derived from the basic symmetries of the mul...
For random samples of size n obtained from p-variate normal distribu-tions, we consider the classica...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
The Chi-Square test (χ2 test) is a family of tests based on a series of assumptions and is frequentl...
One test which is often used to investigate fit of the Rasch model to a dataset, is the Martin-Löf t...
AbstractThe classical theory for testing the null hypothesis that a set of canonical correlation coe...
We present a test for detecting `multivariate structure ' in data sets. This procedure consists...
Statisticians are often faced with the problem of choosing the appropriate dimensionality of a model...
AbstractIn canonical correlation analysis the number of nonzero population correlation coefficients ...
Zero-inflated distributions are common in statistical problems where there is interest in testing ho...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
One common objective of many multivariate techniques is to achieve a reduction in dimensionality whi...
We consider a recurrent event wherein the inter-event times are independent and identically distribu...
We present a preliminary test for nonlinear structure in large data sets. This procedure consists of...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
Some new upper bounds for noncentral chi-square cdf are derived from the basic symmetries of the mul...
For random samples of size n obtained from p-variate normal distribu-tions, we consider the classica...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
The Chi-Square test (χ2 test) is a family of tests based on a series of assumptions and is frequentl...
One test which is often used to investigate fit of the Rasch model to a dataset, is the Martin-Löf t...