A proposed generalized mean single multiplicative neuron model

M. A. Attia, E. Sallam, M. Fahmy
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引用次数: 5

Abstract

This paper presents a single multiplicative neuron model based on a polynomial architecture. The proposed neuron model consists of a non-linear aggregation function based on the concept of generalized mean of all multiplicative inputs. This neuron model has the same number of parameters as the single multiplicative neuron model (SMN). The SMN model is a special case of the proposed generalized mean single multiplicative neuron (GMSMN) model. The structure of this model is simpler than higher-order neuron model. The simulation results show that the performance of the proposed neuron model is better than SMN model.
提出一种广义平均单乘法神经元模型
提出了一种基于多项式结构的单乘法神经元模型。提出的神经元模型由一个基于所有乘法输入广义均值概念的非线性聚合函数组成。该神经元模型具有与单乘法神经元模型(SMN)相同数量的参数。SMN模型是广义平均单乘法神经元(GMSMN)模型的一个特例。该模型比高阶神经元模型结构简单。仿真结果表明,该神经元模型的性能优于SMN模型。
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