Sparse Recovery With Graph Constraints

作者:Wang Meng*; Xu Weiyu; Mallada Enrique; Tang Ao
来源:IEEE Transactions on Information Theory, 2015, 61(2): 1028-1044.
DOI:10.1109/TIT.2014.2376955

摘要

Sparse recovery can recover sparse signals from a set of underdetermined linear measurements. Motivated by the need to monitor the key characteristics of large-scale networks from a limited number of measurements, this paper addresses the problem of recovering sparse signals in the presence of network topological constraints. Unlike conventional sparse recovery where a measurement can contain any subset of the unknown variables, we use a graph to characterize the topological constraints and allow an additive measurement over nodes (unknown variables) only if they induce a connected subgraph. We provide explicit measurement constructions for several special graphs, and the number of measurements by our construction is less than that needed by existing random constructions. Moreover, our construction for a line network is provably optimal in the sense that it requires the minimum number of measurements. A measurement construction algorithm for general graphs is also proposed and evaluated. For any given graph G with n nodes, we derive bounds of the minimum number of measurements needed to recover any k-sparse vector over G (M-k,n(G)). Using the Erdos-Renyi random graph as an example, we characterize the dependence of M-k,n(G) on the graph structure. This paper suggests that M-k,n(G) may serve as a graph connectivity metric.

  • 出版日期2015-2