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A novel self-organizing map learning technique using community neuron on the map

机译:在地图上使用社区神经元的新型自组织地图学习技术

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Self-organizing map (SOM) is an artificial neural network tool that is based on unsupervised learning technique. This is used to produce a low dimensional representation of the input space, called a map. In conventional SOM, a winner is found. The weight vector of winner and its neighbors are updated. The learning of neighbor's neurons is controlled by the distance from the winner on the map. The neurons which are closer to winner learns more. Due to this technique, few neurons become winner again and again. In this paper, we modify the learning technique using community neuron. The community neuron is found in 1- neighborhood of winner neuron. Several simulations are used to illustrate the effectiveness of the proposed algorithm. The learning capabilities are evaluated using three well known measurements, which are widely used to evaluate the performance of learning algorithms.
机译:自组织地图(SOM)是一种基于无监督学习技术的人工神经网络工具。这用于产生输入空间的低维表示,称为地图。在传统的SOM中,找到了胜利者。更新了获胜者及其邻居的权重向量。邻居神经元的学习由地图上获胜者的距离控制。更靠赢家的神经元更多地了解更多。由于这种技术,很少有神经元一次又一次地成为胜利者。在本文中,我们使用社区神经元修改学习技术。社区神经元在胜利者神经元的1堂发现。若干模拟用于说明所提出的算法的有效性。使用三种众所周知的测量来评估学习能力,这些测量被广泛用于评估学习算法的性能。

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