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On Hierarchical Self-Organizing Networks Visualizing Data Classification Processes

机译:在分层自组织网络上可视化数据分类过程

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This paper proposes a self-organizing neural network with hierarchical structure. In the forward phase of learning, the training data is propagated from the top-level neuron to one of the bottom-level neurons, and a combination of a parent neuron and its children, which the training data reaches, is a target for updating their weights. In the backward phase, weights of at least two neurons in such a combination are averaged, and weights of the parent are changed for the averaged weights. The proposed network adequately realizes polysemous data clustering, which yields multiple results, while sustaining the capability of data visualization.
机译:本文提出了一种具有层次结构的自组织神经网络。在学习的前进阶段中,训练数据从顶级神经元传播到底层神经元之一,培训数据到达的父母神经元及其子弹的组合是更新其的目标重量。在向后阶段,平均这样的组合中至少两个神经元的重量,并且父母的重量被改变为平均重量。所提出的网络充分实现了多态数据聚类,从而产生多种结果,同时维持数据可视化能力。

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