3-Layer Neural Network Classifier With the Heterogeneous Hidden Layers

V. Kotsovsky, Vitalii Lazoryshynets
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Abstract

The ways to improve the performance of classifiers based on the bithreshold architecture are considered in the paper. The model of 3-layer neural network binary classifier is proposed whose first hidden layer consists of neural units of 3 kinds: bithreshold neurons, linear threshold units and winner-take-all neurons, and every neuron in the second layer has only 3 inputs with predefined weights. The synthesis algorithm for such networks is designed and estimations of its time complexity and the size of resulting network are presented. The simulation results demonstrate that the application of the new architecture in the classifier design significantly improves its generalization ability.
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具有异构隐藏层的三层神经网络分类器
本文研究了基于双阈值结构的分类器性能改进方法。提出了三层神经网络二值分类器模型,其第一隐层由三种神经单元组成:双阈值神经元、线性阈值神经元和赢者通吃神经元,第二层的每个神经元只有3个预定义权值的输入。设计了这种网络的综合算法,给出了其时间复杂度和网络大小的估计。仿真结果表明,新结构在分类器设计中的应用显著提高了分类器的泛化能力。
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