Title :
Compressive sensing over graphs
Author :
Xu, Weiyu ; Mallada, Enrique ; Tang, Ao
Author_Institution :
Cornell Univ., Ithaca, NY, USA
Abstract :
In this paper, motivated by network inference and tomography applications, we study the problem of compressive sensing for sparse signal vectors over graphs. In particular, we are interested in recovering sparse vectors representing the properties of the edges from a graph. Unlike existing compressive sensing results, the collective additive measurements we are allowed to take must follow connected paths over the underlying graph. For a sufficiently connected graph with n nodes, it is shown that, using O(k log(n)) path measurements, we are able to recover any k-sparse link vector (with no more than k nonzero elements), even though the measurements have to follow the graph path constraints. We mainly show that the computationally efficient ℓ1 minimization can provide theoretical guarantees for inferring such k-sparse vectors with O(k log(n)) path measurements from the graph.
Keywords :
graph theory; minimisation; network theory (graphs); signal processing; vectors; ℓ1 minimization; collective additive measurement; compressive sensing; connected graph; k-sparse link vector; network inference; network tomography; sparse signal vector; sparse vector recovering; Bipartite graph; Compressed sensing; Delay; Indexes; Minimization; Testing; Tomography;
Conference_Titel :
INFOCOM, 2011 Proceedings IEEE
Conference_Location :
Shanghai
Print_ISBN :
978-1-4244-9919-9
DOI :
10.1109/INFCOM.2011.5935018