Literature DB >> 31700197

Distributed estimation of principal eigenspaces.

Jianqing Fan1, Dong Wang1, Kaizheng Wang1, Ziwei Zhu1.   

Abstract

Principal component analysis (PCA) is fundamental to statistical machine learning. It extracts latent principal factors that contribute to the most variation of the data. When data are stored across multiple machines, however, communication cost can prohibit the computation of PCA in a central location and distributed algorithms for PCA are thus needed. This paper proposes and studies a distributed PCA algorithm: each node machine computes the top K eigenvectors and transmits them to the central server; the central server then aggregates the information from all the node machines and conducts a PCA based on the aggregated information. We investigate the bias and variance for the resulting distributed estimator of the top K eigenvectors. In particular, we show that for distributions with symmetric innovation, the empirical top eigenspaces are unbiased and hence the distributed PCA is "unbiased". We derive the rate of convergence for distributed PCA estimators, which depends explicitly on the effective rank of covariance, eigen-gap, and the number of machines. We show that when the number of machines is not unreasonably large, the distributed PCA performs as well as the whole sample PCA, even without full access of whole data. The theoretical results are verified by an extensive simulation study. We also extend our analysis to the heterogeneous case where the population covariance matrices are different across local machines but share similar top eigen-structures.

Entities:  

Keywords:  Communication Efficiency; Distributed Learning; Heterogeneity; One-shot Approach; PCA; Unbiasedness of Empirical Eigenspaces

Year:  2019        PMID: 31700197      PMCID: PMC6836292          DOI: 10.1214/18-AOS1713

Source DB:  PubMed          Journal:  Ann Stat        ISSN: 0090-5364            Impact factor:   4.028


  3 in total

1.  Asymptotics of empirical eigenstructure for high dimensional spiked covariance.

Authors:  Weichen Wang; Jianqing Fan
Journal:  Ann Stat       Date:  2017-06-13       Impact factor: 4.028

2.  The Statistics and Mathematics of High Dimension Low Sample Size Asymptotics.

Authors:  Dan Shen; Haipeng Shen; Hongtu Zhu; J S Marron
Journal:  Stat Sin       Date:  2016-10       Impact factor: 1.261

3.  On Consistency and Sparsity for Principal Components Analysis in High Dimensions.

Authors:  Iain M Johnstone; Arthur Yu Lu
Journal:  J Am Stat Assoc       Date:  2009-06-01       Impact factor: 5.033

  3 in total
  2 in total

1.  Inference for Multiple Heterogeneous Networks with a Common Invariant Subspace.

Authors:  Jesús Arroyo; Avanti Athreya; Joshua Cape; Guodong Chen; Carey E Priebe; Joshua T Vogelstein
Journal:  J Mach Learn Res       Date:  2021-03       Impact factor: 5.177

2.  Integrative, multi-omics, analysis of blood samples improves model predictions: applications to cancer.

Authors:  Erica Ponzi; Magne Thoresen; Therese Haugdahl Nøst; Kajsa Møllersen
Journal:  BMC Bioinformatics       Date:  2021-08-05       Impact factor: 3.169

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.