| Literature DB >> 25392704 |
Rahul Mazumder1, Trevor Hastie1.
Abstract
We consider the sparse inverse covariance regularization problem or graphical lasso with regularization parameter λ. Suppose the sample covariance graph formed by thresholding the entries of the sample covariance matrix at λ is decomposed into connected components. We show that the vertex-partition induced by the connected components of the thresholded sample covariance graph (at λ) is exactly equal to that induced by the connected components of the estimated concentration graph, obtained by solving the graphical lasso problem for the same λ. This characterizes a very interesting property of a path of graphical lasso solutions. Furthermore, this simple rule, when used as a wrapper around existing algorithms for the graphical lasso, leads to enormous performance gains. For a range of values of λ, our proposal splits a large graphical lasso problem into smaller tractable problems, making it possible to solve an otherwise infeasible large-scale problem. We illustrate the graceful scalability of our proposal via synthetic and real-life microarray examples.Entities:
Keywords: Gaussian graphical models; concentration graph; graph connected components; graphical lasso; large scale covariance estimation; sparse inverse covariance selection; sparsity
Year: 2012 PMID: 25392704 PMCID: PMC4225650
Source DB: PubMed Journal: J Mach Learn Res ISSN: 1532-4435 Impact factor: 3.654