| Literature DB >> 25143634 |
Seunggeun Lee1, Fei Zou2, Fred A Wright3.
Abstract
The development of high-throughput biomedical technologies has led to increased interest in the analysis of high-dimensional data where the number of features is much larger than the sample size. In this paper, we investigate principal component analysis under the ultra-high dimensional regime, where both the number of features and the sample size increase as the ratio of the two quantities also increases. We bridge the existing results from the finite and the high-dimension low sample size regimes, embedding the two regimes in a more general framework. We also numerically demonstrate the universal application of the results from the finite regime.Entities:
Keywords: High-Dimension Low Sample Size Data; Principal Component Analysis; Random Matrix
Year: 2014 PMID: 25143634 PMCID: PMC4135472 DOI: 10.1093/biomet/ast064
Source DB: PubMed Journal: Biometrika ISSN: 0006-3444 Impact factor: 2.445