论文标题

分散图形信号的盲形混合

Blind Demixing of Diffused Graph Signals

论文作者

Garcia, Fernando J. Iglesias, Segarra, Santiago, Marques, Antonio G.

论文摘要

使用图形对不规则信息域进行建模是处理当代(网络)数据的某些复杂性的有效方法。一个关键方面是表示为图信号的数据如何取决于图的拓扑。广泛使用的方法假设可以将观察到的信号视为图形过滤器的输出(即,图形的矩阵表示的多项式),其输入具有特定的结构。扩散的图形信号对应于通过图表通过滤波渗透的最初稀疏(节点 - 位置化的)信号落入此类。在这种情况下,本文处理了共同识别图形过滤器并将其(稀疏)输入信号与扩散图信号的混合物分开的问题,从而将其推广到图形信号处理框架的经典盲人解散(盲源分离)的时间和空间信号。我们首先考虑了在信号之间支撑图不同的方案,为将可行性定为定理以及成功恢复的概率界限。此外,还提出了对与单个图形混合的退化问题的分析。合成图和现实图表的数值实验在经验上说明了主要理论发现封闭了本文。

Using graphs to model irregular information domains is an effective approach to deal with some of the intricacies of contemporary (network) data. A key aspect is how the data, represented as graph signals, depend on the topology of the graph. Widely-used approaches assume that the observed signals can be viewed as outputs of graph filters (i.e., polynomials of a matrix representation of the graph) whose inputs have a particular structure. Diffused graph signals, which correspond to an originally sparse (node-localized) signal percolated through the graph via filtering, fall into this class. In that context, this paper deals with the problem of jointly identifying graph filters and separating their (sparse) input signals from a mixture of diffused graph signals, thus generalizing to the graph signal processing framework the classical blind demixing (blind source separation) of temporal and spatial signals. We first consider the scenario where the supporting graphs are different across the signals, providing a theorem for demixing feasibility along with probabilistic bounds on successful recovery. Additionally, an analysis of the degenerate problem of demixing with a single graph is also presented. Numerical experiments with synthetic and real-world graphs empirically illustrating the main theoretical findings close the paper.

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