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Piecewise-Linear Neural Networks Training Using Gradient Descent Approach
Authors: Gago Lumír | Doležel Petr
Year: 2016
Type of publication: ostatní - článek ve sborníku
Name of source: Automatizácia a riadenie v teórii a praxi 2016
Publisher name: Technická univerzita v Košiciach
Place: Košice
Page from-to: 1-7
Titles:
Language Name Abstract Keywords
eng Piecewise-Linear Neural Networks Training Using Gradient Descent Approach This article focuses on comparison of learning of artificial neural network with a hyperbolic tangent activation function and linear saturated activation function in hidden layers by backpropagation algorithm with momentum. For evaluating of learning characteristics, two experiments with specific value of iterations are performed. The results are analyzed using boxplot graphs for each pair of artificial neural networks. An empirical result discussed comprehensively at the end of the paper is, that the approximation qualities of both networks under examination are similar. Piecewise-Linear Neural Networks; Backpropagation Algorithm