一种基于无监督骨架的类系统结构发现方法

L. State, C. Cocianu, P. Vlamos
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引用次数: 0

摘要

本文的研究目的有两个:提出一种新的聚类分析方法,并研究当它与降维方案相结合时的性能。搜索接近未知类的最佳集群的过程,以获得同质群体,其中同质性是根据相对于当前骨架的组件的非典型类型性来定义的。本文的第三部分描述了我们的方法。根据可用云对应的主方向设置压缩方案。最后一节给出了测试结果,目的是比较我们的方法和标准k-means聚类技术在应用于初始空间和压缩数据时的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An unsupervised skeleton based method to discover the structure of the class system
The aim of the research reported in the paper was twofold: to propose a new approach in cluster analysis and to investigate its performance, when it is combined with dimensionality reduction schemes. The search process for the optimal clusters approximating the unknown classes towards getting homogenous groups, where the homogeneity is defined in terms of the dasiatypicalitypsila of components with respect to the current skeleton. Our method is described in the third section of the paper. The compression scheme was set in terms of the principal directions corresponding to the available cloud. The final section presents the results of the tests aiming the comparison between the performances of our method and the standard k-means clustering technique when they are applied to the initial space as well as to compressed data.
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