论文标题
图形信号处理 - 第三部分:图形上的机器学习,从图形拓扑到应用
Graph Signal Processing -- Part III: Machine Learning on Graphs, from Graph Topology to Applications
论文作者
论文摘要
图形上的许多现代数据分析应用程序都在不知道图形拓扑的域上运行,因此其确定是问题定义的一部分,而不是作为有助于问题解决方案的先验知识。该专着的第三部分首先要解决学习图形拓扑的方法,从问题的物理学已经提出了可能的拓扑结构,再到大多数一般情况下,从数据中学到了图形拓扑。特定的重点是基于观察到的数据的相关性和精度矩阵的图形拓扑定义,并结合了其他先验知识和结构条件,例如图形连接的平滑度或稀疏性。为了学习稀疏图(边缘数量少),使用了最低的绝对收缩和选择算子,即被称为Lasso,以及其图表特定变体图形套索。为了完整,套索的两个变体都是以直观的方式得出的,并解释了。图形拓扑学习范式的深入详细说明是通过在物理定义明确的图表上(例如电路,线性传热,社交和计算机网络以及春季质量系统)提供的几个示例。由于出现了许多图形神经网络(GNN)和卷积图网络(GCN),因此我们还从图形信号滤波的角度回顾了GNN和GCN的主要趋势。接下来考虑晶格结构图的张量表示,并且显示张量(多维数据阵列)是一类特殊的图形信号,因此图形顶点位于高维常规晶格结构上。专着的这一部分以财务数据处理和地下运输网络建模中的两个新兴应用结束。
Many modern data analytics applications on graphs operate on domains where graph topology is not known a priori, and hence its determination becomes part of the problem definition, rather than serving as prior knowledge which aids the problem solution. Part III of this monograph starts by addressing ways to learn graph topology, from the case where the physics of the problem already suggest a possible topology, through to most general cases where the graph topology is learned from the data. A particular emphasis is on graph topology definition based on the correlation and precision matrices of the observed data, combined with additional prior knowledge and structural conditions, such as the smoothness or sparsity of graph connections. For learning sparse graphs (with small number of edges), the least absolute shrinkage and selection operator, known as LASSO is employed, along with its graph specific variant, graphical LASSO. For completeness, both variants of LASSO are derived in an intuitive way, and explained. An in-depth elaboration of the graph topology learning paradigm is provided through several examples on physically well defined graphs, such as electric circuits, linear heat transfer, social and computer networks, and spring-mass systems. As many graph neural networks (GNN) and convolutional graph networks (GCN) are emerging, we have also reviewed the main trends in GNNs and GCNs, from the perspective of graph signal filtering. Tensor representation of lattice-structured graphs is next considered, and it is shown that tensors (multidimensional data arrays) are a special class of graph signals, whereby the graph vertices reside on a high-dimensional regular lattice structure. This part of monograph concludes with two emerging applications in financial data processing and underground transportation networks modeling.