We present a Bayesian model for two-way ANOVA-type analysis of high-dimensional, small sample-size datasets with highly correlated groups of variables. Modern cellular measurement methods are a main application area; typically the task is differential analysis between diseased and healthy samples, complicated by additional covariates requiring a multi-way analysis. The main complication is the combination of high dimensionality and low sample size, which renders classical multivariate techniques useless. We introduce a hierarchical model which does dimensionality reduction by assuming that the input variables come in similarly-behaving groups, and performs an ANOVA-type decomposition for the set of reduced-dimensional latent variables. We a...
Nowadays it is common to collect large volumes of data in many fields with an extensive amount of va...
In the first part of this thesis, we address the question of how new testing methods can be develope...
Motivated by genetic association studies of pleiotropy, we propose a Bayesian latent variable approa...
Motivation: Analysis of variance (ANOVA)-type methods are the default tool for the analysis of data ...
Across the sciences, social sciences and engineering, applied statisticians seek to build understand...
High-dimensional data occurs when the number of measurements on subjects or sampling units is far gr...
This thesis responds to the challenges of using a large number, such as thousands, of features in re...
Bayesian methods have been widely used nowadays. This dissertation presents new research within the ...
High-dimensional genomic data can provide deep insight into biological processes. However, conventio...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
Modern genomic data sets often involve multiple data-layers (e.g., DNA-sequence, gene expression), e...
Different challenging issues have emerged in recent years regarding the analysis of high dimensional...
With technological, research, and theoretical advancements, the amount of data being generated for a...
High-dimensional longitudinal data, also called “large p small n”, which consists of the situation w...
© 2010 Dr. Hugh Richard MillerHigh-dimensional statistics has captured the imagination of many stati...
Nowadays it is common to collect large volumes of data in many fields with an extensive amount of va...
In the first part of this thesis, we address the question of how new testing methods can be develope...
Motivated by genetic association studies of pleiotropy, we propose a Bayesian latent variable approa...
Motivation: Analysis of variance (ANOVA)-type methods are the default tool for the analysis of data ...
Across the sciences, social sciences and engineering, applied statisticians seek to build understand...
High-dimensional data occurs when the number of measurements on subjects or sampling units is far gr...
This thesis responds to the challenges of using a large number, such as thousands, of features in re...
Bayesian methods have been widely used nowadays. This dissertation presents new research within the ...
High-dimensional genomic data can provide deep insight into biological processes. However, conventio...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
Modern genomic data sets often involve multiple data-layers (e.g., DNA-sequence, gene expression), e...
Different challenging issues have emerged in recent years regarding the analysis of high dimensional...
With technological, research, and theoretical advancements, the amount of data being generated for a...
High-dimensional longitudinal data, also called “large p small n”, which consists of the situation w...
© 2010 Dr. Hugh Richard MillerHigh-dimensional statistics has captured the imagination of many stati...
Nowadays it is common to collect large volumes of data in many fields with an extensive amount of va...
In the first part of this thesis, we address the question of how new testing methods can be develope...
Motivated by genetic association studies of pleiotropy, we propose a Bayesian latent variable approa...