English

Adaptive Randomized Dimension Reduction on Massive Data

Machine Learning 2015-04-14 v1 Quantitative Methods

Abstract

The scalability of statistical estimators is of increasing importance in modern applications. One approach to implementing scalable algorithms is to compress data into a low dimensional latent space using dimension reduction methods. In this paper we develop an approach for dimension reduction that exploits the assumption of low rank structure in high dimensional data to gain both computational and statistical advantages. We adapt recent randomized low-rank approximation algorithms to provide an efficient solution to principal component analysis (PCA), and we use this efficient solver to improve parameter estimation in large-scale linear mixed models (LMM) for association mapping in statistical and quantitative genomics. A key observation in this paper is that randomization serves a dual role, improving both computational and statistical performance by implicitly regularizing the covariance matrix estimate of the random effect in a LMM. These statistical and computational advantages are highlighted in our experiments on simulated data and large-scale genomic studies.

Keywords

Cite

@article{arxiv.1504.03183,
  title  = {Adaptive Randomized Dimension Reduction on Massive Data},
  author = {Gregory Darnell and Stoyan Georgiev and Sayan Mukherjee and Barbara E Engelhardt},
  journal= {arXiv preprint arXiv:1504.03183},
  year   = {2015}
}

Comments

arXiv admin note: substantial text overlap with arXiv:1211.1642

R2 v1 2026-06-22T09:15:06.017Z