理解社会网络分析的图采样算法

Tianyi Wang, Yang Chen, Zengbin Zhang, Tianyin Xu, Long Jin, Pan Hui, Beixing Deng, Xing Li
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引用次数: 105

摘要

由于能够在捕获原始社交图的属性的同时保持图的规模小,图采样为社交网络分析提供了一种高效而廉价的解决方案。挑战在于如何从拥有数百万甚至数十亿节点的庞大社交图谱中创建一个小而有代表性的样本。在以往的研究中提出了几种采样算法,但缺乏公平的评价和比较。在本文中,我们分析了现有的图采样算法的现状,并利用大规模的社会网络数据集评估了它们在有向图上一些公认的图属性上的性能。我们不仅评估了常用的节点度分布,还评估了聚类系数,它量化了图中节点邻居的连接程度。通过比较,我们发现没有一种算法能够在这两个属性上都获得满意的采样结果,并且每种算法在不同类型的数据集上的性能差异很大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding Graph Sampling Algorithms for Social Network Analysis
Being able to keep the graph scale small while capturing the properties of the original social graph, graph sampling provides an efficient, yet inexpensive solution for social network analysis. The challenge is how to create a small, but representative sample out of the massive social graph with millions or even billions of nodes. Several sampling algorithms have been proposed in previous studies, but there lacks fair evaluation and comparison among them. In this paper, we analyze the state-of art graph sampling algorithms and evaluate their performance on some widely recognized graph properties on directed graphs using large-scale social network datasets. We evaluate not only the commonly used node degree distribution, but also clustering coefficient, which quantifies how well connected are the neighbors of a node in a graph. Through the comparison we have found that none of the algorithms is able to obtain satisfied sampling results in both of these properties, and the performance of each algorithm differs much in different kinds of datasets.
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