An efficient hybrid multilayer perceptron neural network with grasshopper optimization

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Heidari, Ali Asghar
Faris, Hossam
Aljarah, Ibrahim
Mirjalili, Seyedali
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2019
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Abstract

This paper proposes a new hybrid stochastic training algorithm using the recently proposed grasshopper optimization algorithm (GOA) for multilayer perceptrons (MLPs) neural networks. The GOA algorithm is an emerging technique with a high potential in tackling optimization problems based on its flexible and adaptive searching mechanisms. It can demonstrate a satisfactory performance by escaping from local optima and balancing the exploration and exploitation trends. The proposed GOAMLP model is then applied to five important datasets: breast cancer, parkinson, diabetes, coronary heart disease, and orthopedic patients. The results are deeply validated in comparison with eight recent and well-regarded algorithms qualitatively and quantitatively. It is shown and proved that the proposed stochastic training algorithm GOAMLP is substantially beneficial in improving the classification rate of MLPs.

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Soft Computing

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Artificial intelligence

Applied mathematics

Cognitive and computational psychology

Information and computing sciences

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