A common feature of high-dimensional data is that the data dimension is high, however, the sample size is relatively low. We call such data HDLSS data. In this paper, we study asymptotic properties of the first principal component in the HDLSS context and apply them to equality tests of covariance matrices for high-dimensional data sets. We consider HDLSS asymptotic theories as the dimension grows for both the cases when the sample size is fixed and the sample size goes to infinity. We introduce an eigenvalue estimator by the noise-reduction methodology and provide asymptotic distributions of the largest eigenvalue in the HDLSS context. We construct a confidence interval of the first contribution ratio and give a one-sample test. We give as...
This paper deals with the distribution of the LR statistic for testing the hypothesis that the small...
In this paper, we consider an equality test of high-dimensional covariance matrices under the strong...
For the test of sphericity, Ledoit and Wolf [Ann. Statist. 30 (2002) 1081-1102] proposed a statistic...
In this article, we propose a new estimation methodology to deal with PCA for high-dimension, low-sa...
AbstractIn High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much la...
In High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much larger tha...
Principal Component Analysis (PCA) is an important tool of dimension reduction especially when the d...
In High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much larger tha...
Principal Component Analysis (PCA) is an important tool of dimension reduction especially when the d...
In this paper, we propose a new methodology to deal with PCA in high-dimension, low-sample-size (HDL...
In this paper, we consider two-sample tests for covariance matrices in high-dimensional settings. We...
This dissertation consists of three research topics regarding High Dimension, Low Sample Size (HDLSS...
This dissertation consists of three research topics regarding High Dimension, Low Sample Size (HDLSS...
AbstractIn the spiked covariance model for High Dimension Low Sample Size (HDLSS) asymptotics where ...
AbstractIn High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much la...
This paper deals with the distribution of the LR statistic for testing the hypothesis that the small...
In this paper, we consider an equality test of high-dimensional covariance matrices under the strong...
For the test of sphericity, Ledoit and Wolf [Ann. Statist. 30 (2002) 1081-1102] proposed a statistic...
In this article, we propose a new estimation methodology to deal with PCA for high-dimension, low-sa...
AbstractIn High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much la...
In High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much larger tha...
Principal Component Analysis (PCA) is an important tool of dimension reduction especially when the d...
In High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much larger tha...
Principal Component Analysis (PCA) is an important tool of dimension reduction especially when the d...
In this paper, we propose a new methodology to deal with PCA in high-dimension, low-sample-size (HDL...
In this paper, we consider two-sample tests for covariance matrices in high-dimensional settings. We...
This dissertation consists of three research topics regarding High Dimension, Low Sample Size (HDLSS...
This dissertation consists of three research topics regarding High Dimension, Low Sample Size (HDLSS...
AbstractIn the spiked covariance model for High Dimension Low Sample Size (HDLSS) asymptotics where ...
AbstractIn High Dimension, Low Sample Size (HDLSS) data situations, where the dimension d is much la...
This paper deals with the distribution of the LR statistic for testing the hypothesis that the small...
In this paper, we consider an equality test of high-dimensional covariance matrices under the strong...
For the test of sphericity, Ledoit and Wolf [Ann. Statist. 30 (2002) 1081-1102] proposed a statistic...