Conditional Sparse Linear Regression

08/18/2016
by   Brendan Juba, et al.
0

Machine learning and statistics typically focus on building models that capture the vast majority of the data, possibly ignoring a small subset of data as "noise" or "outliers." By contrast, here we consider the problem of jointly identifying a significant (but perhaps small) segment of a population in which there is a highly sparse linear regression fit, together with the coefficients for the linear fit. We contend that such tasks are of interest both because the models themselves may be able to achieve better predictions in such special cases, but also because they may aid our understanding of the data. We give algorithms for such problems under the sup norm, when this unknown segment of the population is described by a k-DNF condition and the regression fit is s-sparse for constant k and s. For the variants of this problem when the regression fit is not so sparse or using expected error, we also give a preliminary algorithm and highlight the question as a challenge for future work.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/06/2018

Conditional Linear Regression

Work in machine learning and statistics commonly focuses on building mod...
research
11/15/2021

Conditional Linear Regression for Heterogeneous Covariances

Often machine learning and statistical models will attempt to describe t...
research
06/26/2018

Conditional Sparse ℓ_p-norm Regression With Optimal Probability

We consider the following conditional linear regression problem: the tas...
research
11/18/2020

A Discussion on Practical Considerations with Sparse Regression Methodologies

Sparse linear regression is a vast field and there are many different al...
research
07/30/2023

Towards Practical Robustness Auditing for Linear Regression

We investigate practical algorithms to find or disprove the existence of...
research
01/04/2018

Model Class Reliance: Variable Importance Measures for any Machine Learning Model Class, from the "Rashomon" Perspective

There are serious drawbacks to many current variable importance (VI) met...
research
01/29/2023

Imbalanced Mixed Linear Regression

We consider the problem of mixed linear regression (MLR), where each obs...

Please sign up or login with your details

Forgot password? Click here to reset