Trend Motif: A Graph Mining Approach for Analysis of Dynamic Complex Networks

R. Jin, Scott McCallen, E. Almaas
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引用次数: 55

Abstract

Complex networks have been used successfully in scientific disciplines ranging from sociology to microbiology to describe systems of interacting units. Until recently, studies of complex networks have mainly focused on their network topology. However, in many real world applications, the edges and vertices have associated attributes that are frequently represented as vertex or edge weights. Furthermore, these weights are often not static, instead changing with time and forming a time series. Hence, to fully understand the dynamics of the complex network, we have to consider both network topology and related time series data. In this work, we propose a motif mining approach to identify trend motifs for such purposes. Simply stated, a trend motif describes a recurring subgraph where each of its vertices or edges displays similar dynamics over a user- defined period. Given this, each trend motif occurrence can help reveal significant events in a complex system; frequent trend motifs may aid in uncovering dynamic rules of change for the system, and the distribution of trend motifs may characterize the global dynamics of the system. Here, we have developed efficient mining algorithms to extract trend motifs. Our experimental validation using three disparate empirical datasets, ranging from the stock market, world trade, to a protein interaction network, has demonstrated the efficiency and effectiveness of our approach.
趋势母题:动态复杂网络分析的图挖掘方法
复杂网络已经成功地应用于从社会学到微生物学等科学学科中,以描述相互作用单元的系统。迄今为止,对复杂网络的研究主要集中在其网络拓扑结构上。然而,在许多实际应用程序中,边和顶点具有关联的属性,这些属性通常表示为顶点或边的权重。此外,这些权重通常不是静态的,而是随着时间的变化而变化,形成一个时间序列。因此,为了充分理解复杂网络的动态,我们必须同时考虑网络拓扑和相关的时间序列数据。在这项工作中,我们提出了一种基序挖掘方法来识别这种目的的趋势基序。简单地说,趋势主题描述了一个重复出现的子图,其中每个顶点或边缘在用户定义的时间段内显示相似的动态。鉴于此,每个趋势基序的出现都有助于揭示复杂系统中的重要事件;频繁的趋势基元可能有助于揭示系统变化的动态规则,趋势基元的分布可能表征系统的全局动态。在这里,我们开发了高效的挖掘算法来提取趋势主题。我们使用三个不同的经验数据集(从股票市场、世界贸易到蛋白质相互作用网络)进行实验验证,证明了我们方法的效率和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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