A New Procedure for Unsupervised Clustering Based on Combination of Artificial Neural Networks

Yaroslava Pushkarova, Paul Kholodniuk
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Abstract

Classification methods have become one of the main tools for extracting essential information from multivariate data. New classification algorithms are continuously being proposed and created. This paper presents a classification procedure based on a combination of Kohonen and probabilistic neural networks. Its applicability and efficiency are estimated using model data sets (iris flowers data set, wine data set, data with a two-hierarchical structure), then compared with the traditional clustering algorithms (hierarchical clustering, k-means clustering, fuzzy k-means clustering). The algorithm was designed as M-script in Matlab 7.11b software. It was shown that the proposed classification procedure has a great advantage over traditional clustering methods.
一种基于人工神经网络组合的无监督聚类新方法
分类方法已成为从多变量数据中提取重要信息的主要工具之一。新的分类算法不断被提出和创造。本文提出了一种基于Kohonen和概率神经网络相结合的分类方法。利用模型数据集(鸢尾花数据集、葡萄酒数据集、双层次结构数据集)对其适用性和效率进行了估计,并与传统聚类算法(层次聚类、k-means聚类、模糊k-means聚类)进行了比较。算法在Matlab 7.11b软件中以M-script的形式设计。结果表明,与传统的聚类方法相比,该方法具有很大的优势。
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