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Controlling Relations between the Individuality and Collectivity of Neurons and its Application to Self-Organizing Maps

机译:神经元的个体性和集体性之间的控制关系及其在自组织映射中的应用

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摘要

In this paper, we consider a society of neurons where different types of neurons interact with each other. For the first approximation to this society, we suppose two types of neurons, namely, individually and collectively treated neurons. Just as individuality must be in harmony with collectivity in actual societies, individually treated neurons must cooperate with collectively treated neurons as much as possible. We here realize this cooperation by making individually treated neurons as similar to collectively treated neurons as possible. The difference between individually and collectively treated neurons is represented by the Kullback-Leibler divergence. This divergence is minimized using free energy minimization. We applied the method to three problems from the well-known machine learning database, namely wine and protein classification, and the image segmentation problem. In all three problems, we succeeded in producing clearer class structures than those obtainable using the conventional SOM. However, we observed that the fidelity to input patterns deteriorated. For this problem, we found that careful treatment of learning processes were needed to keep fidelity to input patterns at an acceptable level.
机译:在本文中,我们考虑了一个神经元社会,其中不同类型的神经元彼此相互作用。对于这个社会的第一个近似,我们假设两种类型的神经元,即个体和集体治疗的神经元。正如现实社会中的个性必须与集体的和谐相处一样,个体对待的神经元必须与集体对待的神经元尽可能多地合作。我们在这里通过使单独处理的神经元尽可能类似于集体处理的神经元来实现这种合作。 Kullback-Leibler散度表示个体处理的神经元和集体处理的神经元之间的差异。使用自由能最小化可以最小化这种差异。我们将该方法应用于著名的机器学习数据库中的三个问题,即葡萄酒和蛋白质分类以及图像分割问题。在所有三个问题中,我们成功地产生了比使用常规SOM可获得的类结构更清晰的类结构。但是,我们观察到输入模式的保真度降低了。对于这个问题,我们发现需要认真对待学习过程,以使输入模式的保真度保持在可接受的水平。

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  • 来源
    《Neural processing letters 》 |2013年第2期| 177-203| 共27页
  • 作者

    Ryotaro Kamimura;

  • 作者单位

    IT Education Center, 1117 Kitakaname, Hiratsuka, Kanagawa 259-1292, Japan;

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  • 正文语种 eng
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