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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >SPSM: A NEW HYBRID DATA CLUSTERING ALGORITHM FOR NONLINEAR DATA ANALYSIS
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SPSM: A NEW HYBRID DATA CLUSTERING ALGORITHM FOR NONLINEAR DATA ANALYSIS

机译:SPSM:一种用于非线性数据分析的新的混合数据聚类算法

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摘要

Existing clustering algorithms, such as single-link clustering, k-means, CURE, and CSM are designed to find clusters based on predefined parameters specified by users. These algorithms may be unsuccessful if the choice of parameters is inappropriate with respect to the data set being clustered. Most of these algorithms work very well for compact and hyper-spherical clusters. In this paper, a new hybrid clustering algorithm called Self-Partition and Self-Merging (SPSM) is proposed. The SPSM algorithm partitions the input data set into several subclusters in the first phase and, then, removes the noisy data in the second phase. In the third phase, the normal subclusters are continuously merged to form the larger clusters based on the inter-cluster distance and intra-cluster distance criteria. From the experimental results, the SPSM algorithm is very efficient to handle the noisy data set, and to cluster the data sets of arbitrary shapes of different density. Several examples for color image show the versatility of the proposed method and compare with results described in the literature for the same images. The computational complexity of the SPSM algorithm is O(N~2), where N is the number of data points.
机译:现有的聚类算法(例如单链接聚类,k均值,CURE和CSM)旨在根据用户指定的预定义参数查找聚类。如果参数的选择相对于要聚类的数据集不合适,则这些算法可能会失败。这些算法中的大多数对于紧凑和超球形的群集都非常有效。本文提出了一种新的混合聚类算法,称为自分区和自合并(SPSM)。 SPSM算法在第一阶段将输入数据集划分为几个子集群,然后在第二阶段去除噪声数据。在第三阶段,根据集群间距离和集群内距离标准,将正常子集群连续合并以形成较大的集群。从实验结果来看,SPSM算法非常有效地处理嘈杂的数据集,并对不同密度的任意形状的数据集进行聚类。彩色图像的几个示例显示了所提出方法的多功能性,并与文献中针对相同图像描述的结果进行了比较。 SPSM算法的计算复杂度为O(N〜2),其中N为数据点的数量。

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