基于颗粒点阵矩阵空间模型的动态聚类算法

Xiaoli Hao, Fu Duan, Bin Liang
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引用次数: 0

摘要

传统的聚类算法通常采用均匀粒度。在聚类过程中容易导致过细或过粗。前者可以将对象划分为不同的类,而这些类本应属于一个类。后者将对象分组到一个类中,这个类应该是不同的。因此,我们在传统的聚类算法中引入了动态粒度。首先,在研究的基础上,提出了颗粒点阵矩阵空间模型。然后用新模型描述了聚类问题。最后给出了基于新模型的聚类算法。为了证明新算法的有效性,我们给出了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Clustering Algorithm Based on Granular Lattice Matrix Space Model
Traditional clustering algorithm usually adopt uniform granularity. It easily leads to too fine or too coarse in clustering process. The former may divides objects into different classes which should be in one. The latter group objects into one class which should be in different. Due to it, we introduce dynamic granularity into traditional clustering algorithm. Firstly, based on research, we present granular lattice matrix space model. Then we describe problem of clustering by the new model. Finally we provide new clustering algorithm based on the new model. To testify the new algorithm, we present tests to prove its efficiency.
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