On the Construction of Sparse Matrices From Expander Graphs

We revisit the asymptotic analysis of probabilistic construction of adjacency matrices of expander graphs proposed in Bah and Tanner [1]. With better bounds we derived a new reduced sample complexity for d, the number of non-zeros per column of these matrices (or equivalently the left-degree of the...

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Main Authors: Bubacarr Bah, Jared Tanner
Format: Article
Language:English
Published: Frontiers Media S.A. 2018-09-01
Series:Frontiers in Applied Mathematics and Statistics
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fams.2018.00039/full
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spelling doaj-e75adf17a7f647799722739cf36898222020-11-25T02:08:31ZengFrontiers Media S.A.Frontiers in Applied Mathematics and Statistics2297-46872018-09-01410.3389/fams.2018.00039410565On the Construction of Sparse Matrices From Expander GraphsBubacarr Bah0Bubacarr Bah1Jared Tanner2The Research Centre, African Institute for Mathematical Sciences, Muizenberg, South AfricaDepartment of Mathematical Sciences, University of Stellenbosch, Stellenbosch, South AfricaMathematics Institute, University of Oxford, Oxford, United KingdomWe revisit the asymptotic analysis of probabilistic construction of adjacency matrices of expander graphs proposed in Bah and Tanner [1]. With better bounds we derived a new reduced sample complexity for d, the number of non-zeros per column of these matrices (or equivalently the left-degree of the underlying expander graph). Precisely d=O(logs(N/s)); as opposed to the standard d=O(log(N/s)), where N is the number of columns of the matrix (also the cardinality of set of left vertices of the expander graph) or the ambient dimension of the signals that can be sensed by such matrices. This gives insights into why using such sensing matrices with small d performed well in numerical compressed sensing experiments. Furthermore, we derive quantitative sampling theorems for our constructions which show our construction outperforming the existing state-of-the-art. We also used our results to compare performance of sparse recovery algorithms where these matrices are used for linear sketching.https://www.frontiersin.org/article/10.3389/fams.2018.00039/fullcompressed sensing (CS)expander graphsprobabilistic constructionsample complexitysampling theoremscombinatorial compressed sensing
collection DOAJ
language English
format Article
sources DOAJ
author Bubacarr Bah
Bubacarr Bah
Jared Tanner
spellingShingle Bubacarr Bah
Bubacarr Bah
Jared Tanner
On the Construction of Sparse Matrices From Expander Graphs
Frontiers in Applied Mathematics and Statistics
compressed sensing (CS)
expander graphs
probabilistic construction
sample complexity
sampling theorems
combinatorial compressed sensing
author_facet Bubacarr Bah
Bubacarr Bah
Jared Tanner
author_sort Bubacarr Bah
title On the Construction of Sparse Matrices From Expander Graphs
title_short On the Construction of Sparse Matrices From Expander Graphs
title_full On the Construction of Sparse Matrices From Expander Graphs
title_fullStr On the Construction of Sparse Matrices From Expander Graphs
title_full_unstemmed On the Construction of Sparse Matrices From Expander Graphs
title_sort on the construction of sparse matrices from expander graphs
publisher Frontiers Media S.A.
series Frontiers in Applied Mathematics and Statistics
issn 2297-4687
publishDate 2018-09-01
description We revisit the asymptotic analysis of probabilistic construction of adjacency matrices of expander graphs proposed in Bah and Tanner [1]. With better bounds we derived a new reduced sample complexity for d, the number of non-zeros per column of these matrices (or equivalently the left-degree of the underlying expander graph). Precisely d=O(logs(N/s)); as opposed to the standard d=O(log(N/s)), where N is the number of columns of the matrix (also the cardinality of set of left vertices of the expander graph) or the ambient dimension of the signals that can be sensed by such matrices. This gives insights into why using such sensing matrices with small d performed well in numerical compressed sensing experiments. Furthermore, we derive quantitative sampling theorems for our constructions which show our construction outperforming the existing state-of-the-art. We also used our results to compare performance of sparse recovery algorithms where these matrices are used for linear sketching.
topic compressed sensing (CS)
expander graphs
probabilistic construction
sample complexity
sampling theorems
combinatorial compressed sensing
url https://www.frontiersin.org/article/10.3389/fams.2018.00039/full
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