基于高动态网络数据的增量集群演化跟踪

Pei Lee, L. Lakshmanan, E. Milios
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引用次数: 77

摘要

动态网络在当前的网络时代很常见。在社交网络和社交媒体等场景下,动态网络具有噪声大、规模大、演化快的特点。本文主要研究高动态网络上的聚类进化跟踪问题,并将其应用于事件进化跟踪。以前有一些关于数据流集群的工作,使用逐节点的方法来维护集群。然而,处理批量更新(即一次处理一个子图)对于在非常大的高动态网络上实现可接受的性能至关重要。本文提出了一种用于聚类演化的逐子图增量跟踪框架。为了有效地说明我们框架中的技术,我们将社交流中的事件演变跟踪任务视为一个应用程序,其中社交流和事件分别被建模为动态帖子网络和动态集群。通过衰落时间窗监测,引入骨架图来总结动态网络中的信息,并使用一组原始进化操作及其代数形式化聚类进化模式。随着时间的推移和网络的发展,开发了两种增量计算算法来维护集群和跟踪进化模式。我们在大型Twitter数据集上的详细实验评估表明,我们的框架可以有效地跟踪来自高度动态网络的完整集群演化模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental cluster evolution tracking from highly dynamic network data
Dynamic networks are commonly found in the current web age. In scenarios like social networks and social media, dynamic networks are noisy, are of large-scale and evolve quickly. In this paper, we focus on the cluster evolution tracking problem on highly dynamic networks, with clear application to event evolution tracking. There are several previous works on data stream clustering using a node-by-node approach for maintaining clusters. However, handling of bulk updates, i.e., a subgraph at a time, is critical for achieving acceptable performance over very large highly dynamic networks. We propose a subgraph-by-subgraph incremental tracking framework for cluster evolution in this paper. To effectively illustrate the techniques in our framework, we consider the event evolution tracking task in social streams as an application, where a social stream and an event are modeled as a dynamic post network and a dynamic cluster respectively. By monitoring through a fading time window, we introduce a skeletal graph to summarize the information in the dynamic network, and formalize cluster evolution patterns using a group of primitive evolution operations and their algebra. Two incremental computation algorithms are developed to maintain clusters and track evolution patterns as time rolls on and the network evolves. Our detailed experimental evaluation on large Twitter datasets demonstrates that our framework can effectively track the complete set of cluster evolution patterns from highly dynamic networks on the fly.
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