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Estimation of covariance and precision matrix, network structure, and a view toward systems biology

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Covariance matrix and its inverse, known as the precision matrix, have many applications in multivariate analysis because their elements can exhibit the variance, correlation, covariance, and conditional independence between variables.… Click to show full abstract

Covariance matrix and its inverse, known as the precision matrix, have many applications in multivariate analysis because their elements can exhibit the variance, correlation, covariance, and conditional independence between variables. The practice of estimating the precision matrix directly without involving any matrix inversion has obtained significant attention in the literature. We review the methods that have been implemented in R and their R packages, particularly when there are more variables than data samples and discuss ideas behind them. We describe how sparse precision matrix estimation methods can be used to infer network structure. Finally, we discuss methods that are suitable for gene coexpression network construction. For further resources related to this article, please visit the WIREs website.

Keywords: biology; network; precision matrix; covariance

Journal Title: Wiley Interdisciplinary Reviews: Computational Statistics
Year Published: 2017

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