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Data analysis of not well separable clusters of different feature density with a two-layer classification system comprised of a SOM and an ART 2-A network

机译:不同特征密度的不同特征密度的不同特征密度的数据分析,其由SOM和艺术2-A网络组成

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This paper introduces a two-layer classification system. The system is suitable for classification tasks of high-dimensional feature spaces which contain not well separable clusters of different feature density. The first layer, a modified SOM, calculates a set of reference vectors of the feature distribution under preservation of neighborhood relations. The modification supports the learning of definite neurons into the direction of clusters with low feature density better than the basic algorithm. In the second layer an ART 2-A network classifies similar and possibly scaled reference vectors into the same class. After classification, each class can contain several reference vectors, which characterize a distribution density function inside the determined classes. In addition an application of the two-layer classification system in the field of biomedical data analysis is described.
机译:本文介绍了双层分类系统。该系统适用于高维特征空间的分类任务,其含有不同特征密度的不可分离的簇。第一层是修改的SOM,计算了在保存邻域关系的特征分布的一组参考矢量。该修改支持将确定的神经元的学习进入具有低特征密度的簇的方向,优于基本算法。在第二层中,艺术2-A网络将与可能缩放的参考向量进行分类为同一类。分类后,每个类可以包含多个参考向量,其在所确定的类内的分发密度函数表征。另外,描述了在生物医学数据分析领域中的双层分类系统的应用。

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