In recent years, the research of artificial neural networks based on fractional calculus has attracted much attention. In this paper, we proposed a fractional-order deep backpropagation (BP) neural network model with L2 regularization. The proposed network was optimized by the fractional gradient descent method with Caputo derivative. We also illustrated the necessary conditions for the convergence of the proposed network. The influence of L2 regularization on the convergence was analyzed with the fractional-order variational method. The experiments have been performed on the MNIST dataset to demonstrate that the proposed network was deterministically convergent and can effectively avoid overfitting
In this paper, a fractional-order recurrent neural network is proposed and several topics related to...
In this paper, numerical methods for solving fractional differential equations by using a triangle n...
In this paper, the influence of the optimization algorithms Adam, RMSprop, L-BFGS and SGD with momen...
The paper presents a model of a neural network with a novel backpropagation rule, which uses a fract...
In order to study the application of nonlinear fractional differential equations in computer artific...
Funded by Naval Postgraduate SchoolThis paper introduces a novel algorithmic framework for a deep ne...
Fractional calculus is an emerging topic in artificial neural network training, especially when usin...
Abstract The current study provides the numerical performances of the fractional kind of breast canc...
In this paper, a deep learning optimization algorithm is proposed, which is based on the Grünwald–Le...
The primary goal of this research is to propose a novel architecture for a deep neural network that ...
Lately, there is a great concern in the applications of the artificial neural networks approach in m...
In this work, we introduce a generalization of the differential polynomial neural network utilizing ...
Feed Forward Neural Networks (FFNN) are one of the most used models of machine learning in literatur...
At present, the theory and application of fractional-order neural networks remain in the exploratory...
Motivated by the weighted averaging method for training neural networks, we study the time-fractiona...
In this paper, a fractional-order recurrent neural network is proposed and several topics related to...
In this paper, numerical methods for solving fractional differential equations by using a triangle n...
In this paper, the influence of the optimization algorithms Adam, RMSprop, L-BFGS and SGD with momen...
The paper presents a model of a neural network with a novel backpropagation rule, which uses a fract...
In order to study the application of nonlinear fractional differential equations in computer artific...
Funded by Naval Postgraduate SchoolThis paper introduces a novel algorithmic framework for a deep ne...
Fractional calculus is an emerging topic in artificial neural network training, especially when usin...
Abstract The current study provides the numerical performances of the fractional kind of breast canc...
In this paper, a deep learning optimization algorithm is proposed, which is based on the Grünwald–Le...
The primary goal of this research is to propose a novel architecture for a deep neural network that ...
Lately, there is a great concern in the applications of the artificial neural networks approach in m...
In this work, we introduce a generalization of the differential polynomial neural network utilizing ...
Feed Forward Neural Networks (FFNN) are one of the most used models of machine learning in literatur...
At present, the theory and application of fractional-order neural networks remain in the exploratory...
Motivated by the weighted averaging method for training neural networks, we study the time-fractiona...
In this paper, a fractional-order recurrent neural network is proposed and several topics related to...
In this paper, numerical methods for solving fractional differential equations by using a triangle n...
In this paper, the influence of the optimization algorithms Adam, RMSprop, L-BFGS and SGD with momen...