Traditional multivariate tests, Hotelling\u27s T 2 or Wilks, are designed for a test of the mean vector under the condition that the number of observations is larger than the number of variables. For high-dimensional data, where the number of features is nearly as large as or larger than the number of observations, the existing tests do not provide a satisfactory solution because of the singularity of the estimated covariance matrix. In this article, we consider a test for the mean vector of independent and identically distributed multivariate normal random vectors where the dimension is larger than or equal to the number of observations. To solve this problem, we propose a modified Hotelling statistic. Simulation results show that the prop...
When testing for the mean vector in a high dimensional setting, it is generally assumed that the obs...
When testing for the mean vector in a high-dimensional setting, it is generally assumed that the obs...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
Traditional multivariate tests, Hotelling\u27s T 2 or Wilks, are designed for a test of the mean vec...
Traditional multivariate tests, Hotelling?s T 2 or Wilks , are designed for a test of the mean vecto...
Traditional statistical data analysis mostly includes methods and techniques to deal with problems i...
<p>This work is concerned with testing the population mean vector of nonnormal high-dimensional mult...
Traditional statistical data analysis mostly includes methods and techniques to deal with problems i...
A common problem in multivariate statistical analysis involves testing for differences in the mean v...
Conventional methods for testing the mean vector of a P-variate Gaussian distribution require a samp...
Modern measurement technology has enabled the capture of high-dimensional data by researchers and st...
In this article, we consider the problem of testing the equality of mean vectors of dimension ρ of s...
A unified testing framework is presented for large-dimensional mean vectors of one or several popula...
Multivariate analysis has undergone radical changes in the recent past with the advent of the so-cal...
International audienceWe provide a generalization of Hotelling's Theorem that enables inference (i) ...
When testing for the mean vector in a high dimensional setting, it is generally assumed that the obs...
When testing for the mean vector in a high-dimensional setting, it is generally assumed that the obs...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...
Traditional multivariate tests, Hotelling\u27s T 2 or Wilks, are designed for a test of the mean vec...
Traditional multivariate tests, Hotelling?s T 2 or Wilks , are designed for a test of the mean vecto...
Traditional statistical data analysis mostly includes methods and techniques to deal with problems i...
<p>This work is concerned with testing the population mean vector of nonnormal high-dimensional mult...
Traditional statistical data analysis mostly includes methods and techniques to deal with problems i...
A common problem in multivariate statistical analysis involves testing for differences in the mean v...
Conventional methods for testing the mean vector of a P-variate Gaussian distribution require a samp...
Modern measurement technology has enabled the capture of high-dimensional data by researchers and st...
In this article, we consider the problem of testing the equality of mean vectors of dimension ρ of s...
A unified testing framework is presented for large-dimensional mean vectors of one or several popula...
Multivariate analysis has undergone radical changes in the recent past with the advent of the so-cal...
International audienceWe provide a generalization of Hotelling's Theorem that enables inference (i) ...
When testing for the mean vector in a high dimensional setting, it is generally assumed that the obs...
When testing for the mean vector in a high-dimensional setting, it is generally assumed that the obs...
Test statistics for sphericity and identity of the covariance matrix are presented, when the data ar...