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Spectral counting of triangles via element-wise sparsification and triangle-based link recommendation

机译:通过按元素稀疏化和基于三角形的链接推荐对三角形进行光谱计数

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摘要

Triangle counting is an important problem in graph mining. The clustering coefficient and the transitivity ratio, two commonly used measures effectively quantify the triangle density in order to quantify the fact that friends of friends tend to be friends themselves. Furthermore, several successful graph-mining applications rely on the number of triangles in the graph. In this paper, we study the problem of counting triangles in large, power-law networks. Our algorithm, SparsifyingEigenTriangle, relies on the spectral properties of power-law networks and the Achlioptas-McSherry sparsification process. SparsifyingEigenTriangle is easy to parallelize, fast, and accurate. We verify the validity of our approach with several experiments in real-world graphs, where we achieve at the same time high accuracy and considerable speedup versus a straight-forward exact counting competitor. Finally, our contributions include a simple method for making link
机译:三角计数是图形挖掘中的重要问题。聚类系数和传递率这两个常用的度量有效地量化了三角形的密度,以便量化朋友的朋友往往是朋友自己的事实。此外,一些成功的图形挖掘应用程序依赖于图形中三角形的数量。在本文中,我们研究了大型幂律网络中三角形的计数问题。我们的算法SparsifyingEigenTriangle依赖于幂律网络和Achlioptas-McSherry稀疏化过程的频谱特性。 SparsifyingEigenTriangle易于并行化,快速且准确。我们通过在真实世界中进行的几次实验验证了我们方法的有效性,在此过程中,与直接精确计数竞争对手相比,我们同时实现了较高的准确性和可观的加速。最后,我们的贡献包括建立链接的简单方法

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