基于非联想学习机制的神经网络模型及其应用

S. Bi, Qi Diao, Xiaofeng Chai, Cunwu Han
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引用次数: 2

摘要

习惯化是生物神经元的非联想学习机制。本文研究了联想学习机制的简化描述,在经典的M-P (McCulloch - Pitts)神经元模型的基础上,提出了具有习惯化学习能力的学习神经元模型,包括习惯化神经元。同时,本文在对学习神经元进行简化描述的基础上,设计了习惯化神经元的数学模型,并将习惯化神经元应用于深度卷积神经网络。实验证明,习惯化神经元具有典型的习惯化学习能力,可以优化卷积网络的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On a neural network model based on non-associative learning mechanism and its application
Habituation is non-associative learning mechanism of biological neurons. This paper studied the simplified description of associative learning mechanism, and based on the classical M-P (McCulloch — Pitts) neuron model, put forward study neurons model with the ability of habituation learning, including habituation neurons. At the same time, in this paper, based on the simplified description of Learning neurons, the mathematical model of habituation neurons is designed, and habituation neurons are applied to deep convolution neural networks. It has been verified by experiment that habituation neurons have typical habituation learning ability, and can optimize the performance of convolution networks.
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