Motivation: Low sample size n high-dimensional large p data with np are commonly encountered in genomics and statistical genetics. Ill-conditioning of the variance-covariance matrix for such data renders the traditional multivariate data analytical approaches unattractive. On the other side, functional data analysis (FDA) approaches are designed for infinite-dimensional data and therefore may have potential for the analysis of large p data. We herein propose a functional embedding (FEM) technique, which exploits the interface between multivariate and functional data, aiming at borrowing strength across the sample through FDA techniques in order to resolve the difficulties caused by the high dimension p. Results: Using pairwise dissimilariti...
In our attempts to understand cellular function at the molecular level, we must be able to synthesiz...
Most analyses carried out using high throughput data consist of the repeti-tion of the same statisti...
The LeFE algorithm has been developed to address the complex, non-linear regulation of gene expressi...
Motivation: Low sample size n high-dimensional large p data with n << p are commonly encounter...
In the paper we study the application of various supervised machine learning techniques to induce cl...
Abstract Background Development of robust and efficient methods for analyzing and interpreting high ...
This paper compares the performance of linear and non-linear projection techniques in functionally c...
Abstract Background Expression array data are used to predict biological functions of uncharacterize...
High-throughput technologies allow to produce rapidly huge amount of gene expression data, useful to...
The advent of high-throughput technologies has resulted in the generation of unprecedented large-sca...
The Guilt-by-Association (GBA) principle, according to which genes with similar expression profiles ...
Gene expression over time can be viewed as a continuous process and therefore represented as a conti...
As various genome sequencing projects have already been completed or are near completion, genome res...
Interpretation of microarray data remains a challenge, and most methods fail to consider the complex...
As various genome sequencing projects have already been completed or are near completion, genome res...
In our attempts to understand cellular function at the molecular level, we must be able to synthesiz...
Most analyses carried out using high throughput data consist of the repeti-tion of the same statisti...
The LeFE algorithm has been developed to address the complex, non-linear regulation of gene expressi...
Motivation: Low sample size n high-dimensional large p data with n << p are commonly encounter...
In the paper we study the application of various supervised machine learning techniques to induce cl...
Abstract Background Development of robust and efficient methods for analyzing and interpreting high ...
This paper compares the performance of linear and non-linear projection techniques in functionally c...
Abstract Background Expression array data are used to predict biological functions of uncharacterize...
High-throughput technologies allow to produce rapidly huge amount of gene expression data, useful to...
The advent of high-throughput technologies has resulted in the generation of unprecedented large-sca...
The Guilt-by-Association (GBA) principle, according to which genes with similar expression profiles ...
Gene expression over time can be viewed as a continuous process and therefore represented as a conti...
As various genome sequencing projects have already been completed or are near completion, genome res...
Interpretation of microarray data remains a challenge, and most methods fail to consider the complex...
As various genome sequencing projects have already been completed or are near completion, genome res...
In our attempts to understand cellular function at the molecular level, we must be able to synthesiz...
Most analyses carried out using high throughput data consist of the repeti-tion of the same statisti...
The LeFE algorithm has been developed to address the complex, non-linear regulation of gene expressi...