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Graph Mining: Laws, Generators, and Algorithms

机译:图挖掘:定律,生成器和算法

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How does the Web look? How could we tell an abnormal social network from a normal one? These and similar questions are important in many fields where the data can intuitively be cast as a graph; examples range from computer networks to sociology to biology and many more. Indeed, any M : N relation in database terminology can be represented as a graph. A lot of these questions boil down to the following: "How can we generate synthetic but realistic graphs?" To answer this, we must first understand what patterns are common in real-world graphs and can thus be considered a mark of normality/realism. This survey give an overview of the incredible variety of work that has been done on these problems. One of our main contributions is the integration of points of view from physics, mathematics, sociology, and computer science. Further, we briefly describe recent advances on some related and interesting graph problems.
机译:网络外观如何?我们如何才能从正常的社交网络中分辨出异常的社交网络?这些问题和类似问题在许多领域都很重要,在这些领域中,数据可以直观地转换为图表。例子从计算机网络到社会学再到生物学等等。实际上,数据库术语中的任何M:N关系都可以表示为图形。这些问题很多归结为以下几点:“我们如何生成综合但逼真的图形?”要回答这个问题,我们必须首先了解现实世界图中常见的模式,因此可以将其视为常态/现实主义的标志。这项调查概述了针对这些问题所做的令人难以置信的各种工作。我们的主要贡献之一是整合了物理学,数学,社会学和计算机科学的观点。此外,我们简要描述了一些相关和有趣的图问题的最新进展。

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