E. Arsiriy, S. Antoshchuk, V. Arsiri, T. V. Groysman
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Improving the efficiency of MLP back propogation learning at the classification of quasi-stationary signals
Investigated efficiency improvement for the back propagation learning in batch mode of MLP at the classification of quasi-stationary signals relied on tuning the learning rate based on gradient descent algorithm and the slope angle of the neurons activation function.