The paper presents a model of a neural network with a novel backpropagation rule, which uses a fractional order derivative mechanism. Using the Grunwald Letnikow definition of the discrete approximation of the fractional derivative, the author proposed the smooth modeling of the transition functions of a single neuron. On this basis, a new concept of a modified backpropagation algorithm was proposed that uses the fractional derivative mechanism both for modeling the dynamics of individual neurons and for minimizing the error function. The description of the signal flow through the neural network and the mechanism of smooth shape control of the activation functions of individual neurons are given. The model of minimization of the error funct...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
Backpropagation is a supervised learning algorithm for training multi-layer neural networks for func...
The paper presents a model of a neural network with a novel backpropagation rule, which uses a fract...
In recent years, the research of artificial neural networks based on fractional calculus has attract...
Feed Forward Neural Networks (FFNN) are one of the most used models of machine learning in literatur...
We present a unified representation of the most popular neural network activation functions. Adoptin...
In this work, we introduce a generalization of the differential polynomial neural network utilizing ...
The back-propagation algorithm calculates the weight changes of an artificial neural network, and a ...
Many real processes are composed of a n-fold repetition of some simpler process. If the whole proces...
In order to study the application of nonlinear fractional differential equations in computer artific...
Fractional calculus is an emerging topic in artificial neural network training, especially when usin...
The efficiency of the back propagation algorithm to train feed forward multilayer neural networks ha...
A general method for deriving backpropagation algorithms for networks with recurrent and higher orde...
This report contains some remarks about the backpropagation method for neural net learning. We conce...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
Backpropagation is a supervised learning algorithm for training multi-layer neural networks for func...
The paper presents a model of a neural network with a novel backpropagation rule, which uses a fract...
In recent years, the research of artificial neural networks based on fractional calculus has attract...
Feed Forward Neural Networks (FFNN) are one of the most used models of machine learning in literatur...
We present a unified representation of the most popular neural network activation functions. Adoptin...
In this work, we introduce a generalization of the differential polynomial neural network utilizing ...
The back-propagation algorithm calculates the weight changes of an artificial neural network, and a ...
Many real processes are composed of a n-fold repetition of some simpler process. If the whole proces...
In order to study the application of nonlinear fractional differential equations in computer artific...
Fractional calculus is an emerging topic in artificial neural network training, especially when usin...
The efficiency of the back propagation algorithm to train feed forward multilayer neural networks ha...
A general method for deriving backpropagation algorithms for networks with recurrent and higher orde...
This report contains some remarks about the backpropagation method for neural net learning. We conce...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
A backpropagation learning algorithm for feedforward neural networks with an adaptive learning rate ...
Backpropagation is a supervised learning algorithm for training multi-layer neural networks for func...