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EQUAL INTERVAL RANGE APPROXIMATION AND EXPANDING LEARNING RULE FOR MULTI-LAYER PERCEPTRONS AND APPLICATIONS
作者姓名:王尧广  刘泽民  周正
作者单位:Beijing University of Posts & Telecommunications Beijing 100088,Beijing University of Posts & Telecommunications,Beijing 100088,Beijing University of Posts & Telecommunications,Beijing 100088
摘    要:In this paper,we propose an equal interval range approximation and expandinglearning rule for multi-layer perceptrons applied in pattern recognitions.Compared with tra-ditional BP algorithm,this learning rule requires the output activations interval between themaximum target output node and other nodes to exceed a given equal interval range for eachtraining input pattern,thus it can train networks faster in much lower calculation cost andmay avoid the occurrences ot reversed target output and overlearning,hence it can improve thenetwork's generalization abilities in pattern recognitions.Through gradually expanding of theinterval range,this learning rule can also enable the network to learn its targets more accuratelyin less additional training iterations.Finally,we apply this algorithm in network training inEEG detection,and the experimental results have shown the above advantages of the proposedalgorithm.


Equal interval range approximation and expanding learning rule for multi-layer perceptrons and applications
Wang Yaoguang,Liu Zemin,Zhou Zheng.EQUAL INTERVAL RANGE APPROXIMATION AND EXPANDING LEARNING RULE FOR MULTI-LAYER PERCEPTRONS AND APPLICATIONS[J].Journal of Electronics,1992,9(4):327-335.
Authors:Wang Yaoguang  Liu Zemin  Zhou Zheng
Affiliation:(1) Beijing University of Posts & Telecommunications, 100088 Beijing
Abstract:In this paper,we propose an equal interval range approximation and expanding learning rule for multi-layer perceptrons applied in pattern recognitions.Compared with tra- ditional BP algorithm,this learning rule requires the output activations interval between the maximum target output node and other nodes to exceed a given equal interval range for each training input pattern,thus it can train networks faster in much lower calculation cost and may avoid the occurrences ot reversed target output and overlearning,hence it can improve the network's generalization abilities in pattern recognitions.Through gradually expanding of the interval range,this learning rule can also enable the network to learn its targets more accurately in less additional training iterations.Finally,we apply this algorithm in network training in EEG detection,and the experimental results have shown the above advantages of the proposed algorithm.
Keywords:Neural network  Pattern recognition  Equal interval range approximation  Expanding learning rule
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