Fractional calculus is an emerging topic in artificial neural network training, especially when using gradient-based methods. This paper brings the idea of fractional derivatives to spiking neural network training using Caputo derivative-based gradient calculation. We focus on conducting an extensive investigation of performance improvements via a case study of small-scale networks using derivative orders in the unit interval. With particle swarm optimization we provide an example of handling the derivative order as an optimizable hyperparameter to find viable values for it. Using multiple benchmark datasets we empirically show that there is no single generally optimal derivative order, rather this value is data-dependent. However, statisti...
This paper proposes a novel method for controlling the convergence rate of a particle swarm optimiza...
We present a unified representation of the most popular neural network activation functions. Adoptin...
AbstractHere, we study the univariate fractional quantitative approximation of real valued functions...
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...
In this work, we introduce a generalization of the differential polynomial neural network utilizing ...
In order to study the application of nonlinear fractional differential equations in computer artific...
Feed Forward Neural Networks (FFNN) are one of the most used models of machine learning in literatur...
Motivated by the weighted averaging method for training neural networks, we study the time-fractiona...
9th International Conference on Innovations in Bio-Inspired Computing and Applications, IBICA 2018 a...
Here, we study the univariate fractional quantitative approximation of real valued functions on a co...
Abstract. In this paper, a swarm intelligence technique, better known as Particle swarm optimization...
Derivative free optimization methods have recently gained a lot of attractions for neural learning. ...
In the context of the optimization of Deep Neural Networks, we propose to rescale the learning rate ...
The paper presents a method for using fractional concepts in a neural network to modify the activati...
This paper proposes a novel method for controlling the convergence rate of a particle swarm optimiza...
We present a unified representation of the most popular neural network activation functions. Adoptin...
AbstractHere, we study the univariate fractional quantitative approximation of real valued functions...
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...
In this work, we introduce a generalization of the differential polynomial neural network utilizing ...
In order to study the application of nonlinear fractional differential equations in computer artific...
Feed Forward Neural Networks (FFNN) are one of the most used models of machine learning in literatur...
Motivated by the weighted averaging method for training neural networks, we study the time-fractiona...
9th International Conference on Innovations in Bio-Inspired Computing and Applications, IBICA 2018 a...
Here, we study the univariate fractional quantitative approximation of real valued functions on a co...
Abstract. In this paper, a swarm intelligence technique, better known as Particle swarm optimization...
Derivative free optimization methods have recently gained a lot of attractions for neural learning. ...
In the context of the optimization of Deep Neural Networks, we propose to rescale the learning rate ...
The paper presents a method for using fractional concepts in a neural network to modify the activati...
This paper proposes a novel method for controlling the convergence rate of a particle swarm optimiza...
We present a unified representation of the most popular neural network activation functions. Adoptin...
AbstractHere, we study the univariate fractional quantitative approximation of real valued functions...