| Literature DB >> 25878487 |
Jian Guo1, Gareth James2, Elizaveta Levina3, George Michailidis3, Ji Zhu3.
Abstract
In this article, we propose a new method for principal component analysis (PCA), whose main objective is to capture natural "blocking" structures in the variables. Further, the method, beyond selecting different variables for different components, also encourages the loadings of highly correlated variables to have the same magnitude. These two features often help in interpreting the principal components. To achieve these goals, a fusion penalty is introduced and the resulting optimization problem solved by an alternating block optimization algorithm. The method is applied to a number of simulated and real datasets and it is shown that it achieves the stated objectives. The supplemental materials for this article are available online.Entities:
Keywords: Fusion penalty; Local quadratic approximation; Sparsity; Variable selection
Year: 2010 PMID: 25878487 PMCID: PMC4394907 DOI: 10.1198/jcgs.2010.08127
Source DB: PubMed Journal: J Comput Graph Stat ISSN: 1061-8600 Impact factor: 2.302