| Literature DB >> 26819572 |
Jean-Eudes Dazard1, Hua Xu1, J Sunil Rao2.
Abstract
We present an implementation in the R language for statistical computing of our recent non-parametric joint adaptive mean-variance regularization and variance stabilization procedure. The method is specifically suited for handling difficult problems posed by high-dimensional multivariate datasets (p ≫ n paradigm), such as in 'omics'-type data, among which are that the variance is often a function of the mean, variable-specific estimators of variances are not reliable, and tests statistics have low powers due to a lack of degrees of freedom. The implementation offers a complete set of features including: (i) normalization and/or variance stabilization function, (ii) computation of mean-variance-regularized t and F statistics, (iii) generation of diverse diagnostic plots, (iv) synthetic and real 'omics' test datasets, (v) computationally efficient implementation, using C interfacing, and an option for parallel computing, (vi) manual and documentation on how to setup a cluster. To make each feature as user-friendly as possible, only one subroutine per functionality is to be handled by the end-user. It is available as an R package, called MVR ('Mean-Variance Regularization'), downloadable from the CRAN.Entities:
Keywords: High-Dimensional Data; Mean-Variance Estimation; Parallel Programming; R package; Regularization and Variance Stabilization; Regularized Test-statistics
Year: 2011 PMID: 26819572 PMCID: PMC4725579
Source DB: PubMed Journal: Proc Am Stat Assoc ISSN: 1543-3218