A common practice for developing a Neural Network architecture is to build models in which each layer has a single activation function that is applied to all nodes uniformly. This paper explores the effects of using multiple different activation functions per layer of a neural network to analyze the effects of the architectures’ ability to generalize datasets. This approach could allow neural networks to better generalize complex data providing better performances than networks with uniform activation functions. The approach was tested on a fully connected neural network and compared to traditional models, an identical network with uniform activations, and an identical network with a different activation function for each layer. The models ...
Artificial neural networks are function-approximating models that can improve themselves with experi...
In neural networks literature, there is a strong interest in identifying and defining activation fun...
Deep learning, the study of multi-layered artificial neural networks, has received tremendous attent...
A common practice for developing a Neural Network architecture is to build models in which each laye...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe ability o...
In this paper the effects of different activation functions on neural networks are argued
Background:- Artificial Neural networks are motivated from biological nervous system and can be used...
Activation functions are a very crucial part of convolutional neural networks (CNN) because to a ver...
The activation function used to transform the activation level of a unit (neuron) into an output sig...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
Neuroevolution methods evolve the weights of a neural network, and in some cases the topology, but l...
Inspired by biological neurons, the activation functions play an essential part in the learning proc...
This paper discusses properties of activation functions in multilayer neural network applied to patt...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
Artificial neural networks are function-approximating models that can improve themselves with experi...
In neural networks literature, there is a strong interest in identifying and defining activation fun...
Deep learning, the study of multi-layered artificial neural networks, has received tremendous attent...
A common practice for developing a Neural Network architecture is to build models in which each laye...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe ability o...
In this paper the effects of different activation functions on neural networks are argued
Background:- Artificial Neural networks are motivated from biological nervous system and can be used...
Activation functions are a very crucial part of convolutional neural networks (CNN) because to a ver...
The activation function used to transform the activation level of a unit (neuron) into an output sig...
Activation functions play an important role in artificial neural networks (ANNs) because they break ...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
Neuroevolution methods evolve the weights of a neural network, and in some cases the topology, but l...
Inspired by biological neurons, the activation functions play an essential part in the learning proc...
This paper discusses properties of activation functions in multilayer neural network applied to patt...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
Artificial neural networks are function-approximating models that can improve themselves with experi...
In neural networks literature, there is a strong interest in identifying and defining activation fun...
Deep learning, the study of multi-layered artificial neural networks, has received tremendous attent...