Activation functions are crucial in deep learning networks, given that the nonlinear ability of activation functions endows deep neural networks with real artificial intelligence. Nonlinear nonmonotonic activation functions, such as rectified linear units, Tan hyperbolic (tanh), Sigmoid, Swish, Mish, and Logish, perform well in deep learning models; however, only a few of them are widely used in mostly all applications due to their existing inconsistencies. Inspired by the MB-C-BSIF method, this study proposes Smish, a novel nonlinear activation function, expressed as f(x)=x·tanh[ln(1+sigmoid(x))], which could overcome other activation functions with good properties. Logarithmic operations are first used to reduce the range of sigmoid(x). T...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe ability o...
The activation function deployed in a deep neural network has great influence on the performance of ...
Activation functions (AFs) are the basis for neural network architectures used in real-world problem...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
In deep learning models, the inputs to the network are processed using activation functions to gener...
Activation function is a key component in deep learning that performs non-linear mappings between th...
Activation functions are essential for deep learning methods to learn and perform complex tasks such...
QActivation function is a key component in deep learning that performs non-linear mappings between t...
Deep Learning in the field of Big Data has become essential for the analysis and perception of trend...
© 2017 IEEE. Deep Belief Network (DBN) is made up of stacked Restricted Boltzmann Machine layers ass...
The activation function in neural network is one of the important aspects which facilitates the deep...
Deep feedforward neural networks with piecewise linear activations are currently producing the state...
Non-linear activation functions are integral parts of deep neural architectures. Given the large and...
Inspired by biological neurons, the activation functions play an essential part in the learning proc...
In the infancy of backpropagation [1, 2], the shape of the (dierentiable) activation function was in...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe ability o...
The activation function deployed in a deep neural network has great influence on the performance of ...
Activation functions (AFs) are the basis for neural network architectures used in real-world problem...
Neural networks have shown tremendous growth in recent years to solve numerous problems. Various typ...
In deep learning models, the inputs to the network are processed using activation functions to gener...
Activation function is a key component in deep learning that performs non-linear mappings between th...
Activation functions are essential for deep learning methods to learn and perform complex tasks such...
QActivation function is a key component in deep learning that performs non-linear mappings between t...
Deep Learning in the field of Big Data has become essential for the analysis and perception of trend...
© 2017 IEEE. Deep Belief Network (DBN) is made up of stacked Restricted Boltzmann Machine layers ass...
The activation function in neural network is one of the important aspects which facilitates the deep...
Deep feedforward neural networks with piecewise linear activations are currently producing the state...
Non-linear activation functions are integral parts of deep neural architectures. Given the large and...
Inspired by biological neurons, the activation functions play an essential part in the learning proc...
In the infancy of backpropagation [1, 2], the shape of the (dierentiable) activation function was in...
MEng (Computer and Electronic Engineering), North-West University, Potchefstroom CampusThe ability o...
The activation function deployed in a deep neural network has great influence on the performance of ...
Activation functions (AFs) are the basis for neural network architectures used in real-world problem...