This dissertation has three consecutive topics. First, we propose a novel class of independence measures for testing independence between two random vectors based on the discrepancy between the conditional and the marginal characteristic functions. If one of the variables is categorical, our asymmetric index extends the typical ANOVA to a kernel ANOVA that can test a more general hypothesis of equal distributions among groups. The index is also applicable when both variables are continuous. Second, we develop a sufficient variable selection procedure based on the new measure in a large p small n setting. Our approach incorporates marginal information between each predictor and the response as well as joint information among predictors. As a...
We present and evaluate the Fast (conditional) Independence Test (FIT) -- a nonparametric conditiona...
Capturing dependence among a large number of high dimensional random vectors is a very important and...
We present and evaluate the Fast (conditional) Independence Test (FIT) -- a nonparametric conditiona...
We introduce a new class of measures for testing independence between two random vectors, which uses...
We propose a novel class of independence measures for testing independence between two random vector...
Independence statistics try to evaluate the statistical dependence between two random vectors of gen...
High-dimensional data, data in which the number of dimensions exceeds the number of observations, is...
Test of independence is of fundamental importance in modern data analysis, with broad applications i...
This paper presents a quick test of independence against a high-dimensional alternative. The test is...
This paper proposes a new mutual independence test for a large number of high dimensional random vec...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
The study of dependence for high dimensional data originates in many different areas of contemporary...
High-dimensional data are becoming increasingly available as data collection technology advances. Ov...
Capturing dependence among a large number of high dimensional random vectors is a very important and...
Variable selection becomes more crucial than before, since high dimensional data are frequently seen...
We present and evaluate the Fast (conditional) Independence Test (FIT) -- a nonparametric conditiona...
Capturing dependence among a large number of high dimensional random vectors is a very important and...
We present and evaluate the Fast (conditional) Independence Test (FIT) -- a nonparametric conditiona...
We introduce a new class of measures for testing independence between two random vectors, which uses...
We propose a novel class of independence measures for testing independence between two random vector...
Independence statistics try to evaluate the statistical dependence between two random vectors of gen...
High-dimensional data, data in which the number of dimensions exceeds the number of observations, is...
Test of independence is of fundamental importance in modern data analysis, with broad applications i...
This paper presents a quick test of independence against a high-dimensional alternative. The test is...
This paper proposes a new mutual independence test for a large number of high dimensional random vec...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
The study of dependence for high dimensional data originates in many different areas of contemporary...
High-dimensional data are becoming increasingly available as data collection technology advances. Ov...
Capturing dependence among a large number of high dimensional random vectors is a very important and...
Variable selection becomes more crucial than before, since high dimensional data are frequently seen...
We present and evaluate the Fast (conditional) Independence Test (FIT) -- a nonparametric conditiona...
Capturing dependence among a large number of high dimensional random vectors is a very important and...
We present and evaluate the Fast (conditional) Independence Test (FIT) -- a nonparametric conditiona...