Correlation coefficients among multiple variables are commonly described in the form of matrices. Applications of such correlation matrices can be found in many fields, such as finance, engineering, statistics, and medicine. This article proposes an efficient way to sequentially obtain the theoretical bounds of correlation coefficients together with an algorithm to generate n × n correlation matrices using any bounded random variables. Interestingly, the correlation matrices generated by this method using uniform random variables as an example produce more extreme relationships among the variables than other methods, which might be useful for modeling complex biological systems where rare cases are very important
Motivation: Modern functional genomics generates high-dimensional datasets. It is often convenient t...
<p>A graphical depiction of the correlation matrix for gene pairs where both genes belong to the fun...
AbstractWe extend and improve two existing methods of generating random correlation matrices, the on...
Correlation coefficients among multiple variables are commonly described in the form of matrices. Ap...
Simulating sample correlation matrices is important in many areas of statistics. Approaches such as ...
An algorithm for generating correlated random variables with known marginal distributions and a spec...
In this dissertation a systematic approach for evaluating statistical techniques over a broad range ...
Correlation matrices---symmetric positive semidefinite matrices with unit diagonal---are important ...
In simulation we often have to generate correlated random variables by giving a reference intercorre...
In this dissertation a systematic approach for evaluating statistical techniques over a broad range ...
Correlation matrices—symmetric positive semidefinite matrices with unit diagonal— are important in s...
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...
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...
<p>A graphical depiction of the correlation matrix for gene pairs where both genes belong to the fun...
AbstractWe extend and improve two existing methods of generating random correlation matrices, the on...
Correlation coefficients among multiple variables are commonly described in the form of matrices. Ap...
Simulating sample correlation matrices is important in many areas of statistics. Approaches such as ...
An algorithm for generating correlated random variables with known marginal distributions and a spec...
In this dissertation a systematic approach for evaluating statistical techniques over a broad range ...
Correlation matrices---symmetric positive semidefinite matrices with unit diagonal---are important ...
In simulation we often have to generate correlated random variables by giving a reference intercorre...
In this dissertation a systematic approach for evaluating statistical techniques over a broad range ...
Correlation matrices—symmetric positive semidefinite matrices with unit diagonal— are important in s...
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...
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...
<p>A graphical depiction of the correlation matrix for gene pairs where both genes belong to the fun...
AbstractWe extend and improve two existing methods of generating random correlation matrices, the on...