Robust Least Squares for Quantized Data

03/26/2020
by   Richard Clancy, et al.
0

In this paper we formulate and solve a robust least squares problem for a system of linear equations subject to quantization error. Ordinary least squares fails to consider uncertainty in the data matrices, modeling all noise in the observed signal. Total least squares accounts for uncertainty in the data matrix, but necessarily increases the condition number of the system compared to ordinary least squares. Tikhonov regularization or ridge regression, is frequently employed to combat ill-conditioning, but requires heuristic parameter tuning which presents a host of challenges and places strong assumptions on parameter prior distributions. The proposed method also requires selection of a parameter, but it can be chosen in a natural way, e.g., a matrix rounded to the 4th digit uses an uncertainty bounding parameter of 0.5e-4. We show here that our robust method is theoretically appropriate, tractable, and performs favorably against ordinary and total least squares for both residual and absolute error reduction.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/04/2011

A Risk Comparison of Ordinary Least Squares vs Ridge Regression

We compare the risk of ridge regression to a simple variant of ordinary ...
research
04/07/2021

Approximate maximum likelihood estimators for linear regression with design matrix uncertainty

In this paper we consider regression problems subject to arbitrary noise...
research
08/28/2018

Making ordinary least squares linear classfiers more robust

In the field of statistics and machine learning, the sums-of-squares, co...
research
04/18/2021

Linear shrinkage for predicting responses in large-scale multivariate linear regression

We propose a new prediction method for multivariate linear regression pr...
research
08/25/2019

The Ridge Path Estimator for Linear Instrumental Variables

This paper presents the asymptotic behavior of a linear instrumental var...
research
11/03/2017

Robust Decoding from 1-Bit Compressive Sampling with Least Squares

In 1-bit compressive sensing (1-bit CS) where target signal is coded int...
research
06/20/2023

The Conditioning of Hybrid Variational Data Assimilation

In variational assimilation, the most probable state of a dynamical syst...

Please sign up or login with your details

Forgot password? Click here to reset