基于盲图多滤波器辨识的网络过程估计

Yu Zhu, F. J. Garcia, A. Marques, Santiago Segarra
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引用次数: 4

摘要

我们研究了由相同输入驱动的多个网络过程的联合估计问题,将其转化为一组图滤波器的盲识别问题。更准确地说,我们考虑对几个图信号的观察-即,在图的节点上定义的信号-我们将这些信号建模为不同网络过程(由图过滤器表示)的输出,这些网络过程定义在一个已知的图上,并由一个共同的未知输入驱动。我们的目标是仅通过观察输出来恢复每个网络流程的规范。由于每个过程共享相同的输入,将估计问题耦合起来,提出了一种联合推理方法。我们研究了两种不同的情况,一种是已知滤波器阶数的情况,另一种是未知的情况。对于前一种情况,我们提出了最小二乘方法,并给出了恢复的条件。对于后一种情况,我们提出了一种具有理论保证的稀疏恢复算法。最后,通过数值实验对本文提出的方法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Network Processes via Blind Graph Multi-filter Identification
We study the problem of jointly estimating several network processes that are driven by the same input, recasting it as one of blind identification of a bank of graph filters. More precisely, we consider the observation of several graph signals – i.e., signals defined on the nodes of a graph – and we model each of these signals as the output of a different network process (represented by a graph filter) defined on a common known graph and driven by a common unknown input. Our goal is to recover the specifications of every network process by only observing the outputs. Since every process shares the same input, the estimation problems are coupled, and a joint inference method is proposed. We study two different scenarios, one where the orders of the filters are known, and one where they are not. For the former case we propose a least-squares approach and provide conditions for recovery. For the latter case, we put forth a sparse recovery algorithm with theoretical guarantees. Finally, we illustrate the methods here proposed via numerical experiments.
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