论文标题
学习平滑图信号的基础产品图
Learning Product Graphs Underlying Smooth Graph Signals
论文作者
论文摘要
现实世界数据通常与可以在分析上表示为图表的不规则结构相关联。访问此图,有时从域知识中可以看出这一点,可以更好地表示数据并促进各种信息处理任务。但是,如果不可用的底层图,则需要从数据本身中学到数据表示,数据处理和推理目的。从数据中进行学习图的现有文献主要考虑了任意图,而生成现实世界数据的图往往具有可以在图形学习过程中纳入的其他结构。结构感知的图形学习方法需要更少的参数学习,并具有减少计算,记忆和样本复杂性的潜力。鉴于此,本文的重点是设计一种方法,以从产品图的形式中给出的数据学习结构化图。产品图自然出现在许多现实世界数据集中,并通过几个较小的因子图提供了大规模图的有效而紧凑的表示。为此,首先将图形学习问题作为线性程序提出,该程序(平均)比最新的图形学习算法(平均)优于最先进的程序。该公式本身具有独立的兴趣本身,因为它表明通过简单的线性程序可以进行图形学习。之后,提出了一种旨在学习各种类型的产品图的基于最小化的算法,并为该算法确定了对真实解决方案的局部收敛保证。最后,还通过对合成和真实数据集的数值模拟验证了拟议算法对现有方法的性能提升,降低样本复杂性以及所提出算法的推理能力。
Real-world data is often times associated with irregular structures that can analytically be represented as graphs. Having access to this graph, which is sometimes trivially evident from domain knowledge, provides a better representation of the data and facilitates various information processing tasks. However, in cases where the underlying graph is unavailable, it needs to be learned from the data itself for data representation, data processing and inference purposes. Existing literature on learning graphs from data has mostly considered arbitrary graphs, whereas the graphs generating real-world data tend to have additional structure that can be incorporated in the graph learning procedure. Structure-aware graph learning methods require learning fewer parameters and have the potential to reduce computational, memory and sample complexities. In light of this, the focus of this paper is to devise a method to learn structured graphs from data that are given in the form of product graphs. Product graphs arise naturally in many real-world datasets and provide an efficient and compact representation of large-scale graphs through several smaller factor graphs. To this end, first the graph learning problem is posed as a linear program, which (on average) outperforms the state-of-the-art graph learning algorithms. This formulation is of independent interest itself as it shows that graph learning is possible through a simple linear program. Afterwards, an alternating minimization-based algorithm aimed at learning various types of product graphs is proposed, and local convergence guarantees to the true solution are established for this algorithm. Finally the performance gains, reduced sample complexity, and inference capabilities of the proposed algorithm over existing methods are also validated through numerical simulations on synthetic and real datasets.