A Bayesian Robust Regression Method for Corrupted Data Reconstruction

12/24/2022
by   Fan Zheyi, et al.
0

Because of the widespread existence of noise and data corruption, recovering the true regression parameters with a certain proportion of corrupted response variables is an essential task. Methods to overcome this problem often involve robust least-squares regression, but few methods perform well when confronted with severe adaptive adversarial attacks. In many applications, prior knowledge is often available from historical data or engineering experience, and by incorporating prior information into a robust regression method, we develop an effective robust regression method that can resist adaptive adversarial attacks. First, we propose the novel TRIP (hard Thresholding approach to Robust regression with sImple Prior) algorithm, which improves the breakdown point when facing adaptive adversarial attacks. Then, to improve the robustness and reduce the estimation error caused by the inclusion of priors, we use the idea of Bayesian reweighting to construct the more robust BRHT (robust Bayesian Reweighting regression via Hard Thresholding) algorithm. We prove the theoretical convergence of the proposed algorithms under mild conditions, and extensive experiments show that under different types of dataset attacks, our algorithms outperform other benchmark ones. Finally, we apply our methods to a data-recovery problem in a real-world application involving a space solar array, demonstrating their good applicability.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/07/2018

Adversarial Attacks, Regression, and Numerical Stability Regularization

Adversarial attacks against neural networks in a regression setting are ...
research
05/20/2023

A Novel Framework for Improving the Breakdown Point of Robust Regression Algorithms

We present an effective framework for improving the breakdown point of r...
research
10/02/2017

Online and Distributed Robust Regressions under Adversarial Data Corruption

In today's era of big data, robust least-squares regression becomes a mo...
research
08/07/2023

Unsupervised Adversarial Detection without Extra Model: Training Loss Should Change

Adversarial robustness poses a critical challenge in the deployment of d...
research
01/07/2021

The Effect of Prior Lipschitz Continuity on the Adversarial Robustness of Bayesian Neural Networks

It is desirable, and often a necessity, for machine learning models to b...
research
06/08/2015

Robust Regression via Hard Thresholding

We study the problem of Robust Least Squares Regression (RLSR) where sev...
research
03/27/2019

Iteratively reweighted least squares for robust regression via SVM and ELM

The measure of most robust machine learning methods is reweighted. To ov...

Please sign up or login with your details

Forgot password? Click here to reset