Research of Cluster Analysis Methods for Group Solutions of the Pattern Recognition Problem

L. Cherikbayeva, A. Yerimbetova, Elmira Daiyrbayeva
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引用次数: 2

Abstract

This paper proposes the study of cluster analysis methods for solving the problem of pattern recognition, including group solution methods. The study selected methods for solving the problem of cluster analysis based on a group solution with incomplete training information, investigated and developed models of group solutions based on existing known algorithms. The novelty of the work consists in a combination of algorithms for collective cluster analysis and nuclear classification methods. Numerical experiments on test problems and a real hyperspectral image demonstrate the effectiveness of the proposed method, including in the presence of noisy data.
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模式识别问题群解的聚类分析方法研究
本文提出了解决模式识别问题的聚类分析方法的研究,包括群解方法。本研究选择了基于不完全训练信息的群解解决聚类分析问题的方法,并在现有已知算法的基础上研究开发了群解的模型。这项工作的新颖性在于集体聚类分析和核分类方法的算法组合。在测试问题和真实高光谱图像上的数值实验证明了该方法的有效性,包括在存在噪声数据的情况下。
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