Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient to have a single simple number characterizing the relationship between pairs of such high-dimensional datasets in a comprehensive way. Matrix correlations are such numbers and are appealing since they can be interpreted in the same way as Pearson's correlations familiar to biologists. The high-dimensionality of functional genomics data is, however, problematic for existing matrix correlations. The motivation of this article is 2-fold: (i) we introduce the idea of matrix correlations to the bioinformatics community and (ii) we give an improvement of the most promising matrix correlation coefficient (the RV-coefficient) circumventing the problem...
High-dimensional data from molecular biology possess an intricate correlation structure that is impo...
AbstractLarge-scale “omics” data, such as microarrays, can be used to infer underlying cellular regu...
Both correlation and mutual information (MI) are common co-expression measures. MI has a major advan...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional data sets. It is often convenient ...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
The integration of multiple high-dimensional data sets (omics data) has been a very active but chall...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
High-dimensional data from molecular biology possess an intricate correlation structure that is impo...
AbstractLarge-scale “omics” data, such as microarrays, can be used to infer underlying cellular regu...
Both correlation and mutual information (MI) are common co-expression measures. MI has a major advan...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
Motivation: Modern functional genomics generates high-dimensional data sets. It is often convenient ...
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
The integration of multiple high-dimensional data sets (omics data) has been a very active but chall...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
Motivation Microarray technology can be used to study the expression of thousands of genes across a ...
High-dimensional data from molecular biology possess an intricate correlation structure that is impo...
AbstractLarge-scale “omics” data, such as microarrays, can be used to infer underlying cellular regu...
Both correlation and mutual information (MI) are common co-expression measures. MI has a major advan...