Deep Learning in the field of Big Data has become essential for the analysis and perception of trends. Activation functions play a crucial role in the outcome of these deep learning frameworks. The existing activation functions are hugely focused on data translation from one neural layer to another. Although they have been proven useful and have given consistent results, they are static and mostly non-parametric. In this paper, we propose a new function for modified training of neural networks that is more flexible and adaptable to the data. The proposed catalysis function works over Rectified Linear Unit (ReLU), sigmoid, tanh and all other activation functions to provide adaptive feed-forward training. The function uses vector components o...
In recent years, various deep neural networks with different learning paradigms have been widely emp...
Activation functions are essential for deep learning methods to learn and perform complex tasks such...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
In recent years, deep learning has led to a revolution in machine learning, with artificial neural n...
This paper focuses on the enhancement of the generalization ability and training stability of deep n...
© 2017 IEEE. Deep Belief Network (DBN) is made up of stacked Restricted Boltzmann Machine layers ass...
Researchers have proposed various activation functions. These activation functions help the deep net...
Activation functions are crucial in deep learning networks, given that the nonlinear ability of acti...
Deep feedforward neural networks with piecewise linear activations are currently producing the state...
Activation function is a key component in deep learning that performs non-linear mappings between th...
QActivation function is a key component in deep learning that performs non-linear mappings between t...
In deep learning models, the inputs to the network are processed using activation functions to gener...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe ability o...
Activation functions provide deep neural networks the non-linearity that is necessary to learn compl...
In recent years, various deep neural networks with different learning paradigms have been widely emp...
Activation functions are essential for deep learning methods to learn and perform complex tasks such...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
In recent years, deep learning has led to a revolution in machine learning, with artificial neural n...
This paper focuses on the enhancement of the generalization ability and training stability of deep n...
© 2017 IEEE. Deep Belief Network (DBN) is made up of stacked Restricted Boltzmann Machine layers ass...
Researchers have proposed various activation functions. These activation functions help the deep net...
Activation functions are crucial in deep learning networks, given that the nonlinear ability of acti...
Deep feedforward neural networks with piecewise linear activations are currently producing the state...
Activation function is a key component in deep learning that performs non-linear mappings between th...
QActivation function is a key component in deep learning that performs non-linear mappings between t...
In deep learning models, the inputs to the network are processed using activation functions to gener...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe ability o...
Activation functions provide deep neural networks the non-linearity that is necessary to learn compl...
In recent years, various deep neural networks with different learning paradigms have been widely emp...
Activation functions are essential for deep learning methods to learn and perform complex tasks such...
Deep neural networks (DNN) have been successfully used in diverse emerging domains to solve real wor...