English

Iterative Row Sampling

Data Structures and Algorithms 2013-04-05 v2

Abstract

There has been significant interest and progress recently in algorithms that solve regression problems involving tall and thin matrices in input sparsity time. These algorithms find shorter equivalent of a n*d matrix where n >> d, which allows one to solve a poly(d) sized problem instead. In practice, the best performances are often obtained by invoking these routines in an iterative fashion. We show these iterative methods can be adapted to give theoretical guarantees comparable and better than the current state of the art. Our approaches are based on computing the importances of the rows, known as leverage scores, in an iterative manner. We show that alternating between computing a short matrix estimate and finding more accurate approximate leverage scores leads to a series of geometrically smaller instances. This gives an algorithm that runs in O(nnz(A)+dω+θϵ2)O(nnz(A) + d^{\omega + \theta} \epsilon^{-2}) time for any θ>0\theta > 0, where the dω+θd^{\omega + \theta} term is comparable to the cost of solving a regression problem on the small approximation. Our results are built upon the close connection between randomized matrix algorithms, iterative methods, and graph sparsification.

Keywords

Cite

@article{arxiv.1211.2713,
  title  = {Iterative Row Sampling},
  author = {Mu Li and Gary L. Miller and Richard Peng},
  journal= {arXiv preprint arXiv:1211.2713},
  year   = {2013}
}

Comments

26 pages, 2 figures

R2 v1 2026-06-21T22:36:59.047Z