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research article

Multi-layer State Evolution Under Random Convolutional Design

Daniels, Max
•
Gerbelot, Cédric
•
Krzakala, Florent  
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2022
NeurIPS Proceedings

Signal recovery under generative neural network priors has emerged as a promising direction in statistical inference and computational imaging. Theoretical analysis of reconstruction algorithms under generative priors is, however, challenging. For generative priors with fully connected layers and Gaussian i.i.d. weights, this was achieved by the multi-layer approximate message (ML-AMP) algorithm via a rigorous state evolution. However, practical generative priors are typically convolutional, allowing for computational benefits and inductive biases, and so the Gaussian i.i.d. weight assumption is very limiting. In this paper, we overcome this limitation and establish the state evolution of ML-AMP for random convolutional layers. We prove in particular that random convolutional layers belong to the same universality class as Gaussian matrices. Our proof technique is of an independent interest as it establishes a mapping between convolutional matrices and spatially coupled sensing matrices used in coding theory.

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Type
research article
Author(s)
Daniels, Max
Gerbelot, Cédric
Krzakala, Florent  
Zdeborová, Lenka  
Date Issued

2022

Published in
NeurIPS Proceedings
Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
SPOC1  
IDEPHICS1  
RelationURL/DOI

IsSupplementedBy

https://proceedings.neurips.cc/paper_files/paper/2022/hash/2eb74636e69ca26ab6cba8b724b0776e-Abstract-Conference.html
Available on Infoscience
September 7, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/200388
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