scclustream:一种高效的算法,用于在大数据流中通过滑动窗口跟踪集群

D. Sayed, S. Rady, M. Aref
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引用次数: 2

摘要

数据流挖掘是近年来的一个研究热点。数据流挖掘的一个主要挑战是在一次扫描中从大量动态数据流中实时提取知识。数据流聚类在数据流处理中起着重要的作用。本文提出了一种通过滑动窗口跟踪集群的算法scclustream来处理这类挑战。该算法是对CluStream的改进,后者不涉及滑动窗口的概念。在滑动窗口模型中,只使用最近的数据,而消除旧数据,这允许更快的执行。本文还采用了一种更好的聚类技术来提高准确率。本文提出的算法在入侵检测数据集上进行了测试,结果表明,将CluStream算法与CluStream算法进行比较,证明前者算法在准确率、使用时间和内存资源方面更有效地在线生成大数据流集群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SCLUSTREAM: AN EFFICIENT ALGORITHM FOR TRACKING CLUSTERS OVER SLIDING WINDOW IN BIG DATA STREAMING
Mining in data streams has been a hot research topic in the recent time. A main challenge in data stream mining lies in extracting knowledge in real time from a massive, dynamic data stream in only a single scan. Data stream clustering presents an important role in data stream processing. This paper proposes SCluStream an algorithm for tracking clusters over a sliding window to handle such challenges. The algorithm is an enhancement over CluStream which does not involve this sliding window concept. In the sliding window model, only the most recent data is used while the old data is eliminated, which allows for faster execution. A better clustering technique is also involved which managed to contribute to accuracy enhancement. The proposed algorithm has been tested on a dataset for Intrusion detection and the results showed that comparing SCluStream to CluStream has proven that the former algorithm is more efficient for online clusters generation for big data streaming in regard of the accuracy as well as the utilized time and memory resources.
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