Performances of Various Back-propagation Learning Algorithms of Neural Network Using Matlab
Keywords:
Neural Network, Back-propagation, Training, TestingAbstract
There are plenty of back-propagation learning algorithms of artificial neural network. Performances of various back-propagation learning algorithms have been checked using few portions of Australian Rain Dataset. Polak-Ribiere conjugate gradient back-propagation and Levenberg-Marquardt back-propagation have showed good performance than others.
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. Md. Ashek-Al-Aziz, Abdullah-Hil Muntakim, Md. Kawshik Ahmed, No Regular Behavior Pattern in Neural Network Execution – A Matlab Experience, International Journal of Computer Applications, Vol. 174, No. 19, February 2021
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