%0 Journal Article %T rCUR: an R package for CUR matrix decomposition %A Andras Bodor %A Istvan Csabai %A Michael W Mahoney %A Norbert Solymosi %J BMC Bioinformatics %D 2012 %I BioMed Central %R 10.1186/1471-2105-13-103 %X We present an implementation to perform CUR matrix decompositions, in the form of a freely available, open source R-package called rCUR. This package will help users to perform CUR-based analysis on large-scale data, such as those obtained from different high-throughput technologies, in an interactive and exploratory manner. We show two examples that illustrate how CUR-based techniques make it possible to reduce significantly the number of probes, while at the same time maintaining major trends in data and keeping the same classification accuracy.The package rCUR provides functions for the users to perform CUR-based matrix decompositions in the R environment. In gene expression studies, it gives an additional way of analysis of differential expression and discriminant gene selection based on the use of statistical leverage scores. These scores, which have been used historically in diagnostic regression analysis to identify outliers, can be used by rCUR to identify the most informative data points with respect to which to express the remaining data points. %U http://www.biomedcentral.com/1471-2105/13/103/abstract