基于密度的聚类算法及其变体综述

Pradeep Singh, Prateek A. Meshram
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引用次数: 23

摘要

聚类技术是数据挖掘领域中的一种无监督机器学习技术。许多聚类技术天生对输入参数敏感。不同的聚类技术适用于不同类型的输入数据集。在各种不同的聚类技术中,DBSCAN是最重要的聚类技术之一,它的工作原理是在对输入数据点进行密度估计的同时形成聚类,基本用于随机形状和大小的空间数据集。它还消除了聚类形成过程中的噪声,最坏情况下运行时复杂度为0 (nA2)。DBSCAN技术对于不同密度的数据集也会产生不好的结果。在本文中,我们讨论了不同的基于密度的聚类技术,以及DBSCAN、它的变体和它的一些修改算法,这些算法与它们的输入参数和运行时间复杂性有关。此外,我们还提供了DBSCAN算法在不同基准数据集上的所有不同变体的比较分析,用于计算各种度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey of density based clustering algorithms and its variants
Clustering technique is a unsupervised machine learning technique in the domain of data mining. Many of the clustering techniques are inherently sensitive to the input parameters. Different clustering techniques works differently for different types of the input datasets. Among all different varieties of clustering techniques, DBSCAN is one of the most important clustering technique whose working principle based on the density estimation while forming the clusters of the input dataset points which is basically used for spatial datasets of random shapes and sizes. It also eliminates the noise during the clustering formation process with a worst case run-time complexity of O(nA2). DBSCAN technique also produces a bad result for varied density datasets. In this paper we have discussed about different density based clustering techniques along with DBSCAN, its variants and some of its modified algorithms with respect to their input parameters and running time complexities. Also we have presented the comparison analysis of all the different variants of DBSCAN algorithms over different benchmark datasets for computing various measures.
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