A Statistical Perspective on Randomized Sketching for Ordinary Least-Squares

06/23/2014
by   Garvesh Raskutti, et al.
0

We consider statistical as well as algorithmic aspects of solving large-scale least-squares (LS) problems using randomized sketching algorithms. For a LS problem with input data (X, Y) ∈R^n × p×R^n, sketching algorithms use a sketching matrix, S∈R^r × n with r ≪ n. Then, rather than solving the LS problem using the full data (X,Y), sketching algorithms solve the LS problem using only the sketched data (SX, SY). Prior work has typically adopted an algorithmic perspective, in that it has made no statistical assumptions on the input X and Y, and instead it has been assumed that the data (X,Y) are fixed and worst-case (WC). Prior results show that, when using sketching matrices such as random projections and leverage-score sampling algorithms, with p < r ≪ n, the WC error is the same as solving the original problem, up to a small constant. From a statistical perspective, we typically consider the mean-squared error performance of randomized sketching algorithms, when data (X, Y) are generated according to a statistical model Y = X β + ϵ, where ϵ is a noise process. We provide a rigorous comparison of both perspectives leading to insights on how they differ. To do this, we first develop a framework for assessing algorithmic and statistical aspects of randomized sketching methods. We then consider the statistical prediction efficiency (PE) and the statistical residual efficiency (RE) of the sketched LS estimator; and we use our framework to provide upper bounds for several types of random projection and random sampling sketching algorithms. Among other results, we show that the RE can be upper bounded when p < r ≪ n while the PE typically requires the sample size r to be substantially larger. Lower bounds developed in subsequent results show that our upper bounds on PE can not be improved.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/25/2015

Statistical and Algorithmic Perspectives on Randomized Sketching for Ordinary Least-Squares -- ICML

We consider statistical and algorithmic aspects of solving large-scale l...
research
06/15/2020

Lower Bounds and a Near-Optimal Shrinkage Estimator for Least Squares using Random Projections

In this work, we consider the deterministic optimization using random pr...
research
03/04/2012

Approximate Computation and Implicit Regularization for Very Large-scale Data Analysis

Database theory and database practice are typically the domain of comput...
research
06/23/2013

A Statistical Perspective on Algorithmic Leveraging

One popular method for dealing with large-scale data sets is sampling. F...
research
05/22/2018

Solvable Integration Problems and Optimal Sample Size Selection

We want to compute the integral of a function or the expectation of a ra...
research
08/09/2022

Towards Practical Large-scale Randomized Iterative Least Squares Solvers through Uncertainty Quantification

As the scale of problems and data used for experimental design, signal p...
research
05/26/2021

Contention Resolution with Predictions

In this paper, we consider contention resolution algorithms that are aug...

Please sign up or login with your details

Forgot password? Click here to reset