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Node Exchange for Improvement of SOM Learning

机译:节点交换以提高SOM学习

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摘要

Self Organizing Map (SOM) is a kind of neural networks, that learns the feature of input data thorough unsupervised and competitive neighborhood learning. In SOM learning algorithm, every connection weights in SOM feature map are initialized to random values to covers whole space of input data, however, this is also set nodes to random point of SOM feature map independently with data space. The move distance of output nodes increases and learning convergence becomes slow for this. To improve SOM learning speed, here I propose a new method, node exchange of initial SOM feature map, and a new measure of convergence, the average of the move distance of nodes. As a result of experiments, the average of the move distance of nodes comes to short that it becomes about 45%, and learning speed is improved that it becomes about 50% by this method.
机译:自组织地图(SOM)是一种神经网络,它学习输入数据彻底无监督和竞争邻里学习的特征。在SOM学习算法中,SOM特征映射中的每个连接权重都被初始化为随机值,以涵盖输入数据的整个空间,但是,这也将节点设置为SOM特征映射的随机点与数据空间独立地。输出节点的移动距离增加和学习融合对此变得慢。为了提高SOM学习速度,在这里,我提出了一种新方法,节点交换初始SOM特征图,以及新的收敛度量,节点的移动距离的平均值。由于实验结果,节点的移动距离的平均值短暂地使其变为大约45%,并且改善了学习速度,通过该方法变为大约50%。

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