Efficient Estimation of Triangles in Very Large Graphs

Roohollah Etemadi, Jianguo Lu, Yung H. Tsin
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引用次数: 14

Abstract

The number of triangles in a graph is an important metric for understanding the graph. It is also directly related to the clustering coefficient of a graph, which is one of the most important indicator for social networks. Counting the number of triangles is computationally expensive for very large graphs. Hence, estimation is necessary for large graphs, particularly for graphs that are hidden behind searchable interfaces where the graphs in their entirety are not available. For instance, user networks in Twitter and Facebook are not available for third parties to explore their properties directly. This paper proposes a new method to estimate the number of triangles based on random edge sampling. It improves the traditional random edge sampling by probing the edges that have a higher probability of forming triangles. The method outperforms the traditional method consistently, and can be better by orders of magnitude when the graph is very large. The result is demonstrated on 20 graphs, including the largest graphs we can find. More importantly, we proved the improvement ratio, and verified our result on all the datasets. The analytical results are achieved by simplifying the variances of the estimators based on the assumption that the graph is very large. We believe that such big data assumption can lead to interesting results not only in triangle estimation, but also in other sampling problems.
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超大型图中三角形的有效估计
图中三角形的数量是理解图的重要指标。它还直接关系到图的聚类系数,而聚类系数是社会网络最重要的指标之一。对于非常大的图,计算三角形的数量是非常昂贵的。因此,估计对于大型图是必要的,特别是对于隐藏在可搜索接口后面的图,其中图的整体不可用。例如,Twitter和Facebook上的用户网络不能让第三方直接探索他们的属性。提出了一种基于随机边缘采样的三角形数量估计方法。它改进了传统的随机边缘采样方法,通过探测形成三角形的概率更高的边缘。该方法的性能始终优于传统方法,当图非常大时,其性能可以提高几个数量级。结果在20张图上得到了证明,其中包括我们能找到的最大的图。更重要的是,我们证明了改进比率,并在所有数据集上验证了我们的结果。分析结果是在假设图非常大的情况下,通过简化估计量的方差得到的。我们相信,这样的大数据假设不仅可以在三角形估计中得到有趣的结果,也可以在其他采样问题中得到有趣的结果。
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