English

Randomized Dimension Reduction on Massive Data

Machine Learning 2013-11-07 v2 Methodology

Abstract

Scalability of statistical estimators is of increasing importance in modern applications and dimension reduction is often used to extract relevant information from data. A variety of popular dimension reduction approaches can be framed as symmetric generalized eigendecomposition problems. In this paper we outline how taking into account the low rank structure assumption implicit in these dimension reduction approaches provides both computational and statistical advantages. We adapt recent randomized low-rank approximation algorithms to provide efficient solutions to three dimension reduction methods: Principal Component Analysis (PCA), Sliced Inverse Regression (SIR), and Localized Sliced Inverse Regression (LSIR). A key observation in this paper is that randomization serves a dual role, improving both computational and statistical performance. This point is highlighted in our experiments on real and simulated data.

Keywords

Cite

@article{arxiv.1211.1642,
  title  = {Randomized Dimension Reduction on Massive Data},
  author = {Stoyan Georgiev and Sayan Mukherjee},
  journal= {arXiv preprint arXiv:1211.1642},
  year   = {2013}
}

Comments

31 pages, 6 figures, Key Words:dimension reduction, generalized eigendecompositon, low-rank, supervised, inverse regression, random projections, randomized algorithms, Krylov subspace methods

R2 v1 2026-06-21T22:34:31.983Z