UCS-WN: An unbiased compressive sensing framework for weighted networks

H. Mahyar, Hamid R. Rabieey, Z. S. Hashemifar, Payam Siyari
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引用次数: 12

Abstract

In this paper, we propose a novel framework called UCS-WN in the context of compressive sensing to efficiently recover sparse vectors representing the properties of the links from weighted networks with n nodes. Motivated by network inference, we study the problem of recovering sparse link vectors with network topological constraints over weighted networks. We take sufficient number of collective additive measurements using this framework through connected paths for constructing a feasible measurement matrix. We theoretically show that only O(k log(n)) path measurements via UCS-WN are sufficient for uniquely recovering any k-sparse link vector with no more than k non-zero elements. Moreover, we demonstrate that this framework would converge to an accurate solution for a wide class of networks by experimental evaluations on both synthetic and real datasets.
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UCS-WN:加权网络的无偏压缩感知框架
在本文中,我们提出了一种新的压缩感知框架UCS-WN,以有效地从n个节点的加权网络中恢复表示链路属性的稀疏向量。在网络推理的激励下,研究了加权网络上具有网络拓扑约束的稀疏链路向量恢复问题。我们利用这个框架,通过连通的路径,取了足够数量的集体加性测量来构造一个可行的测量矩阵。我们从理论上证明,通过UCS-WN进行的O(k log(n))个路径测量足以唯一地恢复任何k-稀疏链接向量,其中不超过k个非零元素。此外,我们通过对合成数据集和真实数据集的实验评估证明,该框架将收敛到广泛网络的精确解。
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