基于gossip的分布式数据流光谱聚类

Matt Talistu, Teng-Sheng Moh, M. Moh
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引用次数: 3

摘要

随着Internet、社交网络和其他分布式系统的发展,有大量关于用户事务、网络流量、社交交互和其他领域的数据可供分析。从这些数据中提取知识已经成为一个新兴的研究领域,特别是当数据的规模使得传统的数据挖掘方法无效时。一些方法假设数据位于中心位置或有一组完整的数据可供分析。然而,许多现代应用程序使用分布式数据流。数据集分布在多个位置,每个位置只能访问数据流的一部分。我们提出了一种分布式数据流分析方法,该方法对本地在线摘要使用分层聚类,对这些摘要使用八卦协议进行分发,对离线分析使用谱聚类。最终的解决方案成功地避免了集中式方法的繁重计算和通信能力需求。通过实验,我们证明了该方案能够准确地聚类数据流,并且具有很高的可扩展性。它的质量随着微集群数量的增加而显著提高,但是当微集群数量很小时,它是容错的。最后,与集中式方法相比,它达到了相似的精度水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gossip-based spectral clustering of distributed data streams
With the growth of the Internet, social networks, and other distributed systems, there is an abundance of data about user transactions, network traffic, social interactions, and other areas that is available for analysis. Extracting knowledge from this data has become a growing field of research recently, especially as the size of the data makes traditional data mining methods ineffective. Some approaches assume the data is at a central location or a complete set of data is available for analysis. However, many modern-day applications consume distributed data streams. The dataset is spread across multiple locations and each location only has access to a portion of the data stream. We propose a distributed data stream analysis method, which uses hierarchical clustering for local online summary, a gossip protocol for distributing these summaries, and spectral clustering for offline analysis. The resulting solution successfully avoids the heavy computation and communication capability requirements of a centralized approach. Through experiments, we have demonstrated that the proposed solution is able to accurately cluster the data streams and is highly scalable. Its quality significantly increases as the number of microcluster increases, yet it is fault-tolerant when this number is small. Finally, it has achieved a similar level of accuracy when compared with a centralized approach.
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