GMDP:一种新的多层前馈神经网络统一神经元模型

Sheng-Tun Li, Yiwei Chen, E. Leiss
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引用次数: 3

摘要

各种各样的神经模型,特别是高阶网络,对于复杂的应用具有强大的计算能力。虽然它们比传统的多层感知器有优势,但它们的网络结构和学习算法的不均匀性带来了实际问题。因此,需要一个框架来统一这些不同的模型。本文提出了一种新的神经元模型——广义多树突积单元。采用GMDP单元的多层前馈神经网络能够实现高阶神经网络。将标准的反向传播学习规则推广到该神经网络中。仿真结果表明,单层GMDP网络为解决一般的函数逼近和模式分类问题提供了一种有效的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GMDP: a novel unified neuron model for multilayer feedforward neural networks
A variety of neural models, especially higher-order networks, are known to be computationally powerful for complex applications. While they have advantages over traditional multilayer perceptrons, the nonuniformity in their network structures and learning algorithms creates practical problems. Thus there is a need for a framework that unifies these various models. This paper presents a novel neuron model, called generalized multi-dendrite product (GMDP) unit. Multilayer feedforward neural networks with GMDP units are shown to be capable of realizing higher-order neural networks. The standard backpropagation learning rule is extended to this neural network. Simulation results show that single layer GMDP networks provide an efficient model for solving general problems on function approximation and pattern classification.<>
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