An efficient Self-organizing map learning algorithm with winning frequency of neurons for clustering application

V. Chaudhary, A. Ahlawat, R. S. Bhatia
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引用次数: 12

Abstract

The Self-organizing map (SOM) has been extensively applied to data clustering, image analysis, dimension reduction, and so forth. The conventional SOM does not calculate the winning frequency of each neuron. In this study, we propose a modified SOM which calculate the winning frequency of each neuron. We investigate the behavior of modified SOM in detail. The learning performance is evaluated using the three measurements. We apply modified SOM to various input data set and confirm that modified SOM obtain a more effective map reflecting the distribution state of the input data.
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一种有效的神经元获胜频率自组织映射学习算法
自组织映射(SOM)已广泛应用于数据聚类、图像分析、降维等领域。传统的SOM不计算每个神经元的获胜频率。在这项研究中,我们提出了一种改进的SOM来计算每个神经元的获胜频率。我们详细研究了改性SOM的行为。使用这三个测量来评估学习绩效。我们将修改后的SOM应用于各种输入数据集,并证实修改后的SOM得到了更有效的反映输入数据分布状态的地图。
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