Abstract

Among the existing NN architectures, Multilayer Feedforward Neural Network (MFNN) with single hidden layer architecture has been scrutinized thoroughly as best for solving nonlinear classification problem. The training time is consumed more for very huge training datasets in the MFNN training phase. In order to reduce the training time, a simple and fast training algorithm called Exponential Adaptive Skipping Training (EAST) Algorithm was presented that improves the training speed by significantly reducing the total number of training input samples consumed by MFNN for training at every single epoch. Although the training performance of EAST achieves faster, it still lacks in the accuracy rate due to high skipping factor. In order to improve the accuracy rate of the training algorithm, Hybrid system has been suggested in which the neural network is trained with the fuzzified data. In this paper, a z-Score Fuzzy Exponential Adaptive Skipping Training (z-FEAST) algorithm is proposed which is based on the fuzzification of EAST. The evaluation of the proposed z-FEAST algorithm is demonstrated effectively using the benchmark datasets - Iris, Waveform, Heart Disease and Breast Cancer for different learning rate. Simulation study proved that z-FEAST training algorithm improves the accuracy rate.

Highlights

  • Due to the implicit characteristics of approximating any nonlinear classification problem, Multilayer Feedforward Neural Network (MFNN) with a single hidden layer architecture has been scrutinized thoroughly as best for solving this problem (Mehra and Wah 1992; Hornik et al 1989)

  • Lengthy training time is needed for larger training dataset [3] which influence the training speed

  • A 3-layer feedforward neural network is adopted for the simulation of all the training algorithms with the selected training architecture and training parameters mentioned in the Table 1

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Summary

Introduction

Due to the implicit characteristics of approximating any nonlinear classification problem, Multilayer Feedforward Neural Network (MFNN) with a single hidden layer architecture has been scrutinized thoroughly as best for solving this problem (Mehra and Wah 1992; Hornik et al 1989). Training MFNN with a larger training datasets will generalize the network well. Lengthy training time is needed for larger training dataset [3] which influence the training speed. In order to improve the training speed, EAST algorithm was exercised [6]. It exhibits the training input samples randomly for training which diminishes the total training input samples exponentially which in reduce the overall total training time, thereby speeding up the training process. Since the Fuzzy Logic (FL) enhances the NN generalization capability and Neuro fuzzy hybrid system are universal approximators (Kosko 1994) , a new Neuro fuzzy hybrid system with z-Score function has been put forward for improving the accuracy rate of EAST

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