一种利用粒度技术聚类数据流的新方法

Ankur Kaneriya, M. Shukla
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引用次数: 7

摘要

数据流挖掘由于其广泛的应用和业务用途而具有广泛的应用范围。它提供了充分利用的信息,以充分利用决策和规划的目的。根据应用需要对特定参数的考虑,在流数据挖掘中使用的聚类方法会有所变化。调查论文的目的是探索广泛使用的聚类方法streamk++优于不同的聚类方法,解决传统聚类的问题。介绍了不同的聚类方法,如分层聚类、密度基聚类、分区聚类、参数聚类及其操作方法。虽然BIRCH的速度比streamk++快,但其输出效率不如StreamLS,后者将输入数据流划分为块,并基于局部搜索对每个块进行聚类。这样做的结果是质量相当,并且streamk++随着集群数量的增加而显著提高了可扩展性。采用两阶段聚类方法。使用AIG设置输入流数据的到达率,同样使用AOG设置输出内存,使用AIP设置处理以消耗更少的资源。使用这两种方法,在流数据的时间聚类方面提供了更好的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel approach for clustering data streams using granularity technique
Data Stream mining has large scope due to their usage in vice variety of application and business purpose. It provides the meaning full usage information which use full to take decision and also for planning purpose. According to application needs on particular parameter consideration there will be change in clustering method use in a stream Data mining. The purpose behind survey paper is explore the widely use clustering method StreamKM++ beneficial over the different clustering method and resolve issues of traditional clustering. Also contain different clustering method like hierarchical, density base, Partitioning Method study, Parameter and their operational methodology. BIRCH is faster than StreamKM++ but output of it not efficient and same way compare it with StreamLS, which partitions input data stream into chunk and clustering each chunk base on local search. Outcome of that is quality comparable and StreamKM++ significant better scalable with number of cluster. Clustering method apply using 2-phase method. Setting the arrival rate of input stream Data using AIG, same way sets the memory for output using AOG, and setting processing to consume less resources using AIP. Using both method that's providing the better quality with respect to time clustering of stream data.
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