基于中心性的图嵌入可解释性度量

Shima Khoshraftar, Sedigheh Mahdavi, Aijun An
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引用次数: 1

摘要

许多现实世界的数据被认为是图形,如计算机网络、社会网络和蛋白质-蛋白质相互作用网络。图嵌入方法是在不同领域表示大型图的强大工具。图嵌入方法将图的节点或边等组成部分投影到比图的邻接矩阵维数更低的向量空间中,目的是保持图的特征。生成的嵌入向量已用于各种图挖掘应用,如节点分类、链接预测和异常检测。尽管图嵌入方法取得了广泛的成功,但很少有研究能够更好地理解图嵌入。在本文中,受词嵌入的解释进展的启发,我们提出了两种可解释性度量,通过利用有用的网络中心性属性来量化图嵌入的可解释性,并对不同的图嵌入方法进行比较。利用这些分数,我们可以深入了解图嵌入方法的表征能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Centrality-based Interpretability Measures for Graph Embeddings
Many real-world data are considered as graphs, such as computer networks, social networks and protein-protein interaction networks. Graph embedding methods are powerful tools for representing large graphs in various domains. A graph embedding method projects the components of a graph, such as its nodes or edges, into a vector space with a lower dimensionality than the adjacency matrix of the graph, and aims to preserve the characteristics of the graph. The generated embedding vectors have been utilized in various graph mining applications such as node classification, link prediction and anomaly detection. Despite the wide success of the graph embedding methods, little study has been done to facilitate a better understanding of the graph embeddings. In this paper, inspired by advancements in interpreting word embeddings, we propose two interpretability measures to quantify the interpretability of graph embeddings by leveraging useful network centrality properties and perform comparisons of different graph embedding methods. Using these scores, we can provide insights into the representational power of graph embedding methods.
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