论文标题

来自基质多项式的多个图的联合推断

Joint Inference of Multiple Graphs from Matrix Polynomials

论文作者

Navarro, Madeline, Wang, Yuhao, Marques, Antonio G., Uhler, Caroline, Segarra, Santiago

论文摘要

从观察节目中推断出图结构是一项重要且流行的网络科学任务。从单个图的更常见的推断和由社会和生物网络激发的更常见的推断,我们研究了从其节点(图信号)(图信号)中共同推断多个图的问题,这些图在所需的图中被认为是固定的。从数学角度来看,图形的平稳性意味着信号的协方差与代表基础图的稀疏矩阵之间的映射是由矩阵多项式给出的。一个突出的例子是马尔可夫随机场,其中协方差的倒数产生了稀疏的矩阵。从建模的角度来看,固定图信号可用于建模在一组(不一定已知的)网络上演变的线性网络过程。利用矩阵多项式通勤,一种凸优化方法以及足够的条件,可以保证当有完美的协方差信息时提供真实图的恢复。从经验角度来看,我们尤其重要,我们为恢复误差提供了高概率的界限,这是观察到的信号数量和其他关键问题参数的函数。使用合成和现实世界数据的数值实验证明了该方法具有完美协方差信息以及其在嘈杂制度中的鲁棒性的有效性。

Inferring graph structure from observations on the nodes is an important and popular network science task. Departing from the more common inference of a single graph and motivated by social and biological networks, we study the problem of jointly inferring multiple graphs from the observation of signals at their nodes (graph signals), which are assumed to be stationary in the sought graphs. From a mathematical point of view, graph stationarity implies that the mapping between the covariance of the signals and the sparse matrix representing the underlying graph is given by a matrix polynomial. A prominent example is that of Markov random fields, where the inverse of the covariance yields the sparse matrix of interest. From a modeling perspective, stationary graph signals can be used to model linear network processes evolving on a set of (not necessarily known) networks. Leveraging that matrix polynomials commute, a convex optimization method along with sufficient conditions that guarantee the recovery of the true graphs are provided when perfect covariance information is available. Particularly important from an empirical viewpoint, we provide high-probability bounds on the recovery error as a function of the number of signals observed and other key problem parameters. Numerical experiments using synthetic and real-world data demonstrate the effectiveness of the proposed method with perfect covariance information as well as its robustness in the noisy regime.

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