中文

Singular Value Decomposition and Principal Component Analysis

生物物理 2007-05-23 v4 数据分析、统计与概率 定量方法

摘要

This chapter describes gene expression analysis by Singular Value Decomposition (SVD), emphasizing initial characterization of the data. We describe SVD methods for visualization of gene expression data, representation of the data using a smaller number of variables, and detection of patterns in noisy gene expression data. In addition, we describe the precise relation between SVD analysis and Principal Component Analysis (PCA) when PCA is calculated using the covariance matrix, enabling our descriptions to apply equally well to either method. Our aim is to provide definitions, interpretations, examples, and references that will serve as resources for understanding and extending the application of SVD and PCA to gene expression analysis.

引用

@article{arxiv.physics/0208101,
  title  = {Singular Value Decomposition and Principal Component Analysis},
  author = {Michael E. Wall and Andreas Rechtsteiner and Luis M. Rocha},
  journal= {arXiv preprint arXiv:physics/0208101},
  year   = {2007}
}

备注

18 pages. (9/12/2002) Replaced title. (9/16/2002) Replaced book title. Fixed typos. (3/3/2003) Published. P. 10: "unit variance" -> "unit norm"