Inspired by biological neurons, the activation functions play an essential part in the learning process of any artificial neural network commonly used in many real-world problems. Various activation functions have been proposed in the literature for classification as well as regression tasks. In this work, we survey the activation functions that have been employed in the past as well as the current state-of-the-art. In particular, we present various developments in activation functions over the years and the advantages as well as disadvantages or limitations of these activation functions. We also discuss classical (fixed) activation functions, including rectifier units, and adaptive activation functions. In addition to discussing the taxono...
An activation function, possibly new, is proposed for use in digital simulation of arti#cial neural ...
In Deep learning neural networks (DNNs) activation functions perform a vital role. In each neuron ac...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
Activation functions are an essential part of artificial neural networks. Over the years, researches...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
Activation functions are a very crucial part of convolutional neural networks (CNN) because to a ver...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
In this paper the effects of different activation functions on neural networks are argued
In neural networks literature, there is a strong interest in identifying and defining activation fun...
In recent years, deep learning has led to a revolution in machine learning, with artificial neural n...
© 2018 IEEE. Artificial feedforward neural networks for simple objects recognition of different conf...
Neural Network is said to emulate the brain, though, its processing is not quite how the biological...
In the infancy of backpropagation [1, 2], the shape of the (dierentiable) activation function was in...
Artificial neural networks are function-approximating models that can improve themselves with experi...
An activation function, possibly new, is proposed for use in digital simulation of arti#cial neural ...
In Deep learning neural networks (DNNs) activation functions perform a vital role. In each neuron ac...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
Activation functions are an essential part of artificial neural networks. Over the years, researches...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
Activation functions are a very crucial part of convolutional neural networks (CNN) because to a ver...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
In this paper the effects of different activation functions on neural networks are argued
In neural networks literature, there is a strong interest in identifying and defining activation fun...
In recent years, deep learning has led to a revolution in machine learning, with artificial neural n...
© 2018 IEEE. Artificial feedforward neural networks for simple objects recognition of different conf...
Neural Network is said to emulate the brain, though, its processing is not quite how the biological...
In the infancy of backpropagation [1, 2], the shape of the (dierentiable) activation function was in...
Artificial neural networks are function-approximating models that can improve themselves with experi...
An activation function, possibly new, is proposed for use in digital simulation of arti#cial neural ...
In Deep learning neural networks (DNNs) activation functions perform a vital role. In each neuron ac...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...