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Artificial neural network and multilayer perception

Mali Dhanshri Balaso, Awati Jayshree S.

Abstract


Artificial neural networks are most effectively considered in analyzing of data where traditional methods are not able to solve. ANN have been broadly applied to various fields like data mining, finance, medical, biology and engineering. In finance artificial neural networks are used for stock prediction, economic rate indicator and credit ratings. In data mining ANN is used for classification, analysis, prediction and modeling. In medical ANN is used for detection diagnostic of medical conditions. In this article by using two layers feed forward network and tan sigmoid transfer function is used to examine the neural network and its applications in engineering control.


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