Self-organizing neural networks using adaptive neurons

Jong-Seok Lee, C. Park
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引用次数: 2

Abstract

In this paper, we propose a new kind of neural network having modular structure, neural network with adaptive neurons. Each module is equivalent to an adaptive neuron, which consists of a multi-layer neural network with sigmoid neurons. We develop an algorithm by which the network can automatically adjust its complexity according to the given problem. The proposed network is compared with the project pursuit learning network (PPLN), which is a popular modular architecture. The experimental results demonstrate that the proposed network architecture outperforms the PPLN on four regression problems.
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自适应神经元的自组织神经网络
本文提出了一种具有模块化结构的新型神经网络——自适应神经元神经网络。每个模块相当于一个自适应神经元,由一个具有s形神经元的多层神经网络组成。我们开发了一种算法,通过该算法,网络可以根据给定的问题自动调整其复杂性。将该网络与项目追求学习网络(PPLN)进行了比较,PPLN是一种流行的模块化结构。实验结果表明,本文提出的网络结构在4个回归问题上优于PPLN。
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