Skip to main content Accessibility help
×
Hostname: page-component-76fb5796d-22dnz Total loading time: 0 Render date: 2024-04-27T14:35:44.571Z Has data issue: false hasContentIssue false

9 - Graphical models concepts in compressed sensing

Published online by Cambridge University Press:  05 November 2012

Andrea Montanari
Affiliation:
Stanford University, USA
Yonina C. Eldar
Affiliation:
Weizmann Institute of Science, Israel
Gitta Kutyniok
Affiliation:
Technische Universität Berlin
Get access

Summary

This chapter surveys recent work in applying ideas from graphical models and message passing algorithms to solve large-scale regularized regression problems. In particular, the focus is on compressed sensing reconstruction via 11 penalized least-squares (known as LASSO or BPDN). We discuss how to derive fast approximate message passing algorithms to solve this problem. Surprisingly, the analysis of such algorithms allows one to prove exact high-dimensional limit results for the LASSO risk.

Introduction

The problem of reconstructing a high-dimensional vector x ∈ ℝn from a collection of observations y ∈ ℝm arises in a number of contexts, ranging from statistical learning to signal processing. It is often assumed that the measurement process is approximately linear, i.e. that

where A ∈ ℝm×n is a known measurement matrix, and w is a noise vector.

The graphical models approach to such a reconstruction problem postulates a joint probability distribution on (x, y) which takes, without loss of generality, the form

The conditional distribution p(dy|x) models the noise process, while the prior p(dx) encodes information on the vector x. In particular, within compressed sensing, it can describe its sparsity properties. Within a graphical models approach, either of these distributions (or both) factorizes according to a specific graph structure. The resulting posterior distribution p(dx|y) is used for inferring x given y.

There are many reasons to be skeptical about the idea that the joint probability distribution p(dx, dy) can be determined, and used for reconstructing x.

Type
Chapter
Information
Compressed Sensing
Theory and Applications
, pp. 394 - 438
Publisher: Cambridge University Press
Print publication year: 2012

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

Save book to Kindle

To save this book to your Kindle, first ensure coreplatform@cambridge.org is added to your Approved Personal Document E-mail List under your Personal Document Settings on the Manage Your Content and Devices page of your Amazon account. Then enter the ‘name’ part of your Kindle email address below. Find out more about saving to your Kindle.

Note you can select to save to either the @free.kindle.com or @kindle.com variations. ‘@free.kindle.com’ emails are free but can only be saved to your device when it is connected to wi-fi. ‘@kindle.com’ emails can be delivered even when you are not connected to wi-fi, but note that service fees apply.

Find out more about the Kindle Personal Document Service.

Available formats
×

Save book to Dropbox

To save content items to your account, please confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your account. Find out more about saving content to Dropbox.

Available formats
×

Save book to Google Drive

To save content items to your account, please confirm that you agree to abide by our usage policies. If this is the first time you use this feature, you will be asked to authorise Cambridge Core to connect with your account. Find out more about saving content to Google Drive.

Available formats
×