Swept Approximate Message Passing for Sparse Estimation
Abstract
Approximate Message Passing (AMP) has been shown to be a superior method for inference problems, such as the recovery of signals from sets of noisy, lower-dimensionality measurements, both in terms of reconstruction accuracy and in computational efficiency. However, AMP suffers from serious convergence issues in contexts that do not exactly match its assumptions. We propose a new approach to stabilizing AMP in these contexts by applying AMP updates to individual coefficients rather than in parallel. Our results show that this change to the AMP iteration can provide theoretically expected, but hitherto unobtainable, performance for problems on which the standard AMP iteration diverges. Additionally, we find that the computational costs of this swept coefficient update scheme is not unduly burdensome, allowing it to be applied efficiently to signals of large dimensionality.
Cite
Text
Manoel et al. "Swept Approximate Message Passing for Sparse Estimation." International Conference on Machine Learning, 2015.Markdown
[Manoel et al. "Swept Approximate Message Passing for Sparse Estimation." International Conference on Machine Learning, 2015.](https://mlanthology.org/icml/2015/manoel2015icml-swept/)BibTeX
@inproceedings{manoel2015icml-swept,
title = {{Swept Approximate Message Passing for Sparse Estimation}},
author = {Manoel, Andre and Krzakala, Florent and Tramel, Eric and Zdeborovà, Lenka},
booktitle = {International Conference on Machine Learning},
year = {2015},
pages = {1123-1132},
volume = {37},
url = {https://mlanthology.org/icml/2015/manoel2015icml-swept/}
}