Novel Neuronal Activation Functions for Feedforward Neural Networks

作者:Mehmet Önder Efe

摘要

Feedforward neural network structures have extensively been considered in the literature. In a significant volume of research and development studies hyperbolic tangent type of a neuronal nonlinearity has been utilized. This paper dwells on the widely used neuronal activation functions as well as two new ones composed of sines and cosines, and a sinc function characterizing the firing of a neuron. The viewpoint here is to consider the hidden layer(s) as transforming blocks composed of nonlinear basis functions, which may assume different forms. This paper considers 8 different activation functions which are differentiable and utilizes Levenberg-Marquardt algorithm for parameter tuning purposes. The studies carried out have a guiding quality based on empirical results on several training data sets.

论文关键词:Activation functions, Dynamical system identification, Levenberg-Marquardt algorithm

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论文官网地址:https://doi.org/10.1007/s11063-008-9082-0