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Neighborhood based modified backpropagation algorithm using adaptive learning parameters for training feedforward neural networks
Authors:T.   S.
Affiliation:aDepartment of Computer Science, V.H.N.S.N. College, Virudhunagar 626001, India;bDepartment of Information Technology, Sri Kaliswari College, Sivakasi 626130, India
Abstract:The major drawbacks of backpropagation algorithm are local minima and slow convergence. This paper presents an efficient technique ANMBP for training single hidden layer neural network to improve convergence speed and to escape from local minima. The algorithm is based on modified backpropagation algorithm in neighborhood based neural network by replacing fixed learning parameters with adaptive learning parameters. The developed learning algorithm is applied to several problems. In all the problems, the proposed algorithm outperform well.
Keywords:Neighborhood   Modified standard backpropagation   Adaptive learning parameters   Linear error   Nonlinear error
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