首页> 外文会议>Data Mining Workshops, ICDMW, 2008 IEEE International Conference on >Graph-Based Data Mining in Dynamic Networks: Empirical Comparison of Compression-Based and Frequency-Based Subgraph Mining
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Graph-Based Data Mining in Dynamic Networks: Empirical Comparison of Compression-Based and Frequency-Based Subgraph Mining

机译:动态网络中基于图的数据挖掘:基于压缩和基于频率的子图挖掘的经验比较

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摘要

We propose a dynamic graph-based relational mining approach using graph-rewriting rules to learns patterns in networks that structurally change over time. A dynamic graph containing a sequence of graphs over time represents dynamic properties as well as structural properties of the network. Our approach discovers graph-rewriting rules, which describe the structural transformations between two sequential graphs over time, and also learns description rules that generalize over the discovered graph-rewriting rules. The discovered graph-rewriting rules show how networks change over time, and the description rules in the graph-rewriting rules show temporal patterns in the structural changes. We apply our approach to biological networks to understand how the biosystems change over time. Our compression-based discovery of the description rules is compared with the frequent subgraph mining approach using several evaluation metrics.
机译:我们提出了一种基于动态图的关系挖掘方法,该方法使用图重写规则来学习网络中随时间变化的模式。包含随时间变化的一系列图形的动态图形表示网络的动态特性以及结构特性。我们的方法发现图重写规则,该规则描述了随着时间的推移两个连续图之间的结构转换,还学习了对发现的图重写规则进行概括的描述规则。发现的图形重写规则显示网络如何随时间变化,而图形重写规则中的描述规则显示结构更改中的时间模式。我们将方法应用于生物网络,以了解生物系统如何随时间变化。我们基于压缩的描述规则发现与使用几种评估指标的频繁子图挖掘方法进行了比较。

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