利用结构基元的基于压缩的图挖掘

Jing Feng, Xiao He, N. Hubig, C. Böhm, C. Plant
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引用次数: 12

摘要

我们如何从稀疏图中检索信息?传统的图挖掘方法侧重于发现复杂网络中的密集模式,例如基于模块化或基于切割的方法。然而,大多数真实世界的数据集是非常稀疏的。然而,传统的方法往往会忽略有趣的稀疏模式,比如星星。本文提出了一种利用结构原语对图的传递性和枢纽性进行建模的新图挖掘技术。我们利用这些结构基元使用最小描述长度原则进行有效的图压缩。压缩率是传递性或枢纽性的无偏度量,因此对非常稀疏的图的结构提供了有趣的见解。由于真实图可以由不同结构的子图组成,我们提出了一种新的算法CXprime(基于压缩的利用原语),以我们的编码方案作为目标函数来聚类图。与传统的图聚类方法相比,我们的算法在不需要用户指定输入参数的情况下自动识别不同类型的子图。此外,我们提出了一种新的基于检测子结构的链路预测算法,提高了先前方法的质量。大量的实验在合成数据和真实数据上评估了我们的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compression-Based Graph Mining Exploiting Structure Primitives
How can we retrieve information from sparse graphs? Traditional graph mining approaches focus on discovering dense patterns inside complex networks, for example modularity-based or cut-based methods. However, most real world data sets are very sparse. Nevertheless, traditional approaches tend to omit interesting sparse patterns like stars. In this paper, we propose a novel graph mining technique modeling the transitivity and the hub ness of a graph using structure primitives. We exploit these structure primitives for effective graph compression using the Minimum Description Length Principle. The compression rate is an unbiased measure for the transitivity or hub ness and therefore provides interesting insights into the structure of even very sparse graphs. Since real graphs can be composed of sub graphs of different structures, we propose a novel algorithm CXprime (Compression-based exploiting Primitives) for clustering graphs using our coding scheme as an objective function. In contrast to traditional graph clustering methods, our algorithm automatically recognizes different types of sub graphs without requiring the user to specify input parameters. Additionally we propose a novel link prediction algorithm based on the detected substructures, which increases the quality of former methods. Extensive experiments evaluate our algorithms on synthetic and real data.
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