随机神经网络中的神经活动和簇的形成

N. Matsui, E. Bamba
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引用次数: 0

摘要

研究了随机神经网络中神经活动对聚类形成算法的宏观描述方法。神经元簇之间的活动相互作用和网络熵通过输入模式p的活动参数x(p)作为系统能量引入。利用类似于玻尔兹曼网络的神经状态转移规则和一些简单的随机假设,模拟了神经元簇的形成。显示了群集大小或模拟活动与设置活动参数之间的关系。本文还讨论了这种宏观描述的有效性。
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Neural activities and cluster-formation in a random neural network
An approach to a macroscopic description of a cluster-formation algorithm by neural activities in a random neural network is considered. The activity interaction between clusters of neurons and the network entropy through the medium of the activity parameter x(p) for the input pattern p, are introduced as a system energy. By using the neural state transition rule similar to that in the Boltzmann network and some simple stochastic assumptions, cluster-formation of neurons was simulated. The relations between cluster sizes, or the simulated activity, and the setting activity parameter are shown. The validity of this macroscopic description is also discussed.<>
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