Diffusion profile embedding as a basis for graph vertex similarity

IF 1.4 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY Network Science Pub Date : 2021-09-01 DOI:10.1017/nws.2021.11
Scott Payne, Edgar Fuller, G. Spirou, Cun-Quan Zhang
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引用次数: 4

Abstract

Abstract We describe here a notion of diffusion similarity, a method for defining similarity between vertices in a given graph using the properties of random walks on the graph to model the relationships between vertices. Using the approach of graph vertex embedding, we characterize a vertex vi by considering two types of diffusion patterns: the ways in which random walks emanate from the vertex vi to the remaining graph and how they converge to the vertex vi from the graph. We define the similarity of two vertices vi and vj as the average of the cosine similarity of the vectors characterizing vi and vj. We obtain these vectors by modifying the solution to a differential equation describing a type of continuous time random walk. This method can be applied to any dataset that can be assigned a graph structure that is weighted or unweighted, directed or undirected. It can be used to represent similarity of vertices within community structures of a network while at the same time representing similarity of vertices within layered substructures (e.g., bipartite subgraphs) of the network. To validate the performance of our method, we apply it to synthetic data as well as the neural connectome of the C. elegans worm and a connectome of neurons in the mouse retina. A tool developed to characterize the accuracy of the similarity values in detecting community structures, the uncertainty index, is introduced in this paper as a measure of the quality of similarity methods.
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扩散轮廓嵌入作为图顶点相似度的基础
摘要我们在这里描述了扩散相似性的概念,这是一种定义给定图中顶点之间相似性的方法,使用图上随机游动的性质来建模顶点之间的关系。使用图顶点嵌入的方法,我们通过考虑两种类型的扩散模式来刻画顶点vi:随机游动从顶点vi向剩余图的发散方式,以及它们如何从图收敛到顶点vi。我们将两个顶点vi和vj的相似性定义为表征vi和vj的向量的余弦相似性的平均值。我们通过修改描述一类连续时间随机游动的微分方程的解来获得这些向量。这种方法可以应用于任何数据集,这些数据集可以被分配有权或无权、有向或无向的图结构。它可以用于表示网络的社区结构内顶点的相似性,同时表示网络的分层子结构(例如,二分子图)内顶点的类似性。为了验证我们方法的性能,我们将其应用于合成数据、秀丽隐杆线虫的神经连接体和小鼠视网膜中神经元的连接体。本文介绍了一种用于表征社区结构检测中相似性值准确性的工具,即不确定性指数,作为相似性方法质量的衡量标准。
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来源期刊
Network Science
Network Science SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
3.50
自引率
5.90%
发文量
24
期刊介绍: Network Science is an important journal for an important discipline - one using the network paradigm, focusing on actors and relational linkages, to inform research, methodology, and applications from many fields across the natural, social, engineering and informational sciences. Given growing understanding of the interconnectedness and globalization of the world, network methods are an increasingly recognized way to research aspects of modern society along with the individuals, organizations, and other actors within it. The discipline is ready for a comprehensive journal, open to papers from all relevant areas. Network Science is a defining work, shaping this discipline. The journal welcomes contributions from researchers in all areas working on network theory, methods, and data.
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