JMLR

Inferring Change Points in High-Dimensional Regression via Approximate Message Passing

Authors
Gabriel Arpino Xiaoqi Liu Julia Gontarek Ramji Venkataramanan
Research Topics
Machine Learning High-Dimensional Statistics
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Dec 30, 2025
Abstract

We consider the problem of localizing change points in a generalized linear model (GLM), a model that covers many widely studied problems in statistical learning including linear, logistic, and rectified linear regression. We propose a novel and computationally efficient approximate message passing (AMP) algorithm for estimating both the signals and the change point locations, and rigorously characterize its performance in the high-dimensional limit where the number of parameters $p$ is proportional to the number of samples $n$. This characterization is in terms of a state evolution recursion, which allows us to precisely compute performance measures such as the asymptotic Hausdorff error of our change point estimates, and allows us to tailor the algorithm to take advantage of any prior structural information of the signals and change points. Moreover, we show how our AMP iterates can be used to efficiently compute a Bayesian posterior distribution over the change point locations in the high-dimensional limit. We validate our theory via numerical experiments, and demonstrate the favorable performance of our estimators on both synthetic and real data in the settings of linear, logistic, and rectified linear regression.

Author Details
Gabriel Arpino
Author
Xiaoqi Liu
Author
Julia Gontarek
Author
Ramji Venkataramanan
Author
Research Topics & Keywords
Machine Learning
Research Area
High-Dimensional Statistics
Research Area
Citation Information
APA Format
Gabriel Arpino , Xiaoqi Liu , Julia Gontarek & Ramji Venkataramanan . Inferring Change Points in High-Dimensional Regression via Approximate Message Passing. Journal of Machine Learning Research .
BibTeX Format
@article{paper705,
  title = { Inferring Change Points in High-Dimensional Regression via Approximate Message Passing },
  author = { Gabriel Arpino and Xiaoqi Liu and Julia Gontarek and Ramji Venkataramanan },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v26/24-1789.html }
}