论文标题
通过预测校正算法在线时变拓扑识别
Online Time-Varying Topology Identification via Prediction-Correction Algorithms
论文作者
论文摘要
信号处理和机器学习算法在图形上支持的数据需要了解图形拓扑。除非问题的物理学(例如供水网络,电网)给出,否则必须从数据中学到拓扑。拓扑识别是一项具有挑战性的任务,因为问题通常是不适合的,并且当图形结构时间变化时会变得更加困难。在本文中,我们通过基于随着时间变化的优化的最新结果来解决动态拓扑识别的问题,并设计了在非平稳环境中运行的通用在线算法。由于其迭代受限的性质,提出的方法表现出图形拓扑的固有时间限制,而无需明确执行它。作为一个案例研究,我们将方法专门用于高斯图形模型(GGM)问题,并证实了其性能。
Signal processing and machine learning algorithms for data supported over graphs, require the knowledge of the graph topology. Unless this information is given by the physics of the problem (e.g., water supply networks, power grids), the topology has to be learned from data. Topology identification is a challenging task, as the problem is often ill-posed, and becomes even harder when the graph structure is time-varying. In this paper, we address the problem of dynamic topology identification by building on recent results from time-varying optimization, devising a general-purpose online algorithm operating in non-stationary environments. Because of its iteration-constrained nature, the proposed approach exhibits an intrinsic temporal-regularization of the graph topology without explicitly enforcing it. As a case-study, we specialize our method to the Gaussian graphical model (GGM) problem and corroborate its performance.