Mixed Regression via Approximate Message Passing
Nelvin Tan, Ramji Venkataramanan

TL;DR
This paper introduces a novel approximate message passing algorithm for a generalized linear model with multiple signals and latent variables, providing precise performance analysis and improved estimation in high-dimensional settings.
Contribution
It develops a new AMP algorithm for matrix GLMs, rigorously characterizes its performance via state evolution, and demonstrates superior estimation accuracy over existing methods.
Findings
AMP outperforms other estimators in mixed linear regression.
State evolution accurately predicts AMP performance.
Algorithm effectively estimates signals and latent variables.
Abstract
We study the problem of regression in a generalized linear model (GLM) with multiple signals and latent variables. This model, which we call a matrix GLM, covers many widely studied problems in statistical learning, including mixed linear regression, max-affine regression, and mixture-of-experts. In mixed linear regression, each observation comes from one of signal vectors (regressors), but we do not know which one; in max-affine regression, each observation comes from the maximum of affine functions, each defined via a different signal vector. The goal in all these problems is to estimate the signals, and possibly some of the latent variables, from the observations. We propose a novel approximate message passing (AMP) algorithm for estimation in a matrix GLM and rigorously characterize its performance in the high-dimensional limit. This characterization is in terms of a state…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Sparse and Compressive Sensing Techniques · Blind Source Separation Techniques
MethodsGLM · Adversarial Model Perturbation · Linear Regression
