通过调整SOM的特征图和学习数据来提高视觉稳定性

S. Momoi, T. Miyoshi
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引用次数: 0

摘要

基于SOM学习算法,SOM学习受学习数据序列和初始特征映射的影响。节点在特征图上的位置或节点之间的距离是确定单个数据特征的重要因素。传统方法中特征映射的初始值是随机设置的,因此即使相同的输入数据也会出现不同的映射,从而在不同的诊断中对相同的数据增加不同的印象。本文针对SOM特征映射的视觉稳定性问题,提出了一种新的SOM特征映射初始化方法。该方法的目的是提高SOM特征图的视觉稳定性,并利用SOM的泛化能力。实验结果表明,该方法在特征图点定位上比传统方法具有视觉稳定性,并且大大降低了算法的计算复杂度。
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Improvement of visual stability by adjustment of feature maps and leaning data of SOM
Based on the SOM learning algorithm, SOM learning is influenced by the sequence of learning data and the initial feature map. The location of the node or the distance between nodes on feature map is important factor to determine feature of individual data. In conventional method, initial value of feature map has set at random, so a different mapping appears even by same input data, so different impressions could be increased to the same data in different diagnosis. In this paper, we focused on visual stability of SOM feature map, and we proposed new initialization method of SOM feature map. The purposes of proposed method are improvement of visual stability of SOM feature map, and utilization of generalization ability of SOM. By experiments, proposed method is visually stable than conventional method in the point of feature map location, and the computational complexity of proposed method is greatly reduced.
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