In the first part of this thesis, we address the question of how new testing methods can be developed for two sample inference for high dimensional data. Particularly, chapter 2 focuses on testing the equality of two high dimensional covariance matrices, which can be directly applied to evaluating the difference in genetic correlation for different populations subject to various biological conditions. As we will demonstrate in chapter 2 , the test we propose has no normality assumption and also allows the dimension to be much larger than the sample sizes. These two aspects surpass the capacity of the classical tests such as the likelihood ratio test. Testing the equality of high dimensional mean vectors is another important two-sample testi...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
This paper proposes a new test for testing the equality of two covariance matrices Σ1 and Σ2 in the ...
In the first part of this thesis, we address the question of how new testing methods can be develope...
High-dimensional data, where the number of variables p is large compared to the sample size n, are w...
We propose a test for a high-dimensional covariance being banded with possible diverging bandwidth. ...
The first part of this thesis proposes new tests for high dimensional data. Chapter 2 proposes a hig...
Modern measurement technology has enabled the capture of high-dimensional data by researchers and st...
With the prevalence of high dimensional data, variable selection is crucial in many real application...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
We study two tests for the equality of two population mean vectors under high dimensionality and col...
Advancements in information technology have enabled scientists to collect data of unprecedented size...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
We study two tests for the equality of two population mean vectors under high dimensionality and col...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
This paper proposes a new test for testing the equality of two covariance matrices Σ1 and Σ2 in the ...
In the first part of this thesis, we address the question of how new testing methods can be develope...
High-dimensional data, where the number of variables p is large compared to the sample size n, are w...
We propose a test for a high-dimensional covariance being banded with possible diverging bandwidth. ...
The first part of this thesis proposes new tests for high dimensional data. Chapter 2 proposes a hig...
Modern measurement technology has enabled the capture of high-dimensional data by researchers and st...
With the prevalence of high dimensional data, variable selection is crucial in many real application...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
We study two tests for the equality of two population mean vectors under high dimensionality and col...
Advancements in information technology have enabled scientists to collect data of unprecedented size...
We propose two tests for the equality of covariance matrices between two high-dimensional population...
We study two tests for the equality of two population mean vectors under high dimensionality and col...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
This paper proposes a new test for testing the equality of two covariance matrices Σ1 and Σ2 in the ...