Mining of data stream using “DDenStream” clustering algorithm

M. Kumar, Ashish Sharma
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引用次数: 21

Abstract

Many real time applications, they are generated continues flow of data streams have became more popular now a days. Therefore many researches attracted clustering data streams. Most of data stream clustering algorithms based on distance function which find out clusters with spiracle of shape clusters and unable to deal noisy data. Therefore density based clustering algorithms substitute remarkable solution to find out clusters with arbitrary shapes of cluster and also handling noisy data. In which the clustering is performing with the bases of high density area of objects and also segregate low density objects as noise. In this paper we studied a simple existing data stream clustering algorithm DenStream based on DBScan. Based on DenStream a novel data stream clustering approach “DDenStream” is proposed. DDenStream is a modified data stream clustering algorithm of DenStream. It is based on fading window model therefore it applies a density decaying technique when the evolving data streams are captured and improved the quality of clusters by extracts the boundary points when two or more than microclusters are overlapping each other by using DCQ-Means algorithms. This approach also resolved the overlapping problem of microclusters. It find out arbitrary specs and good quality of clusters with noise.
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利用“DDenStream”聚类算法挖掘数据流
许多实时应用程序,它们生成连续的数据流,现在已经变得越来越流行。因此,聚类数据流的研究备受关注。大多数数据流聚类算法都是基于距离函数来寻找具有螺旋形聚类的聚类,无法处理噪声数据。因此,基于密度的聚类算法取代了显著解来发现具有任意形状的聚类,并处理有噪声的数据。其中以高密度目标区域为基础进行聚类,同时将低密度目标作为噪声分离出来。本文研究了一种简单的基于DBScan的现有数据流聚类算法DenStream。在DenStream的基础上提出了一种新的数据流聚类方法“DDenStream”。DDenStream是对DenStream数据流聚类算法的改进。该方法基于衰落窗口模型,在捕获不断变化的数据流时采用密度衰减技术,并通过DCQ-Means算法提取两个或多个微聚类相互重叠时的边界点来提高聚类质量。该方法还解决了微簇的重叠问题。它可以找出任意规格和高质量的噪声簇。
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