Machine Learning (ML) approach is a discussed research topic because of its benefit in several research fields. The most important issues in the training process of ML are accuracy and speed: a suitable mathematical model is critical and a fast data processing is mandatory. Fractional Calculus is involved in a large number of important applications and, recently, many ML algorithms, in order to improve accuracy of results when performing training in solving optimization problems, are based on decision and control performed by means of time-fractional models to better understand complex systems. However, the high computational cost, which characterizes the numerical solution, of this approach might be a problem for large scale Machine Learni...
Fractional calculus is the generalization of integer-order calculus to rational order. This subject ...
The computational complexity of one-dimensional time fractional reaction-diffusion equation is O(N2M...
Motivated by the weighted averaging method for training neural networks, we study the time-fractiona...
Machine Learning (ML) approach is a discussed research topic because of its benefit in several resea...
Machine Learning (ML) approach is a discussed research topic because of its benefit in several resea...
Machine Learning (ML) approach is a discussed research topic because of its benefit in several resea...
Fractional diffusion systems model a number of important applications, as for example water diffusio...
Fractional diffusion systems model a number of important applications, as for example water diffusio...
Fractional diffusion systems model a number of important applications, as for example water diffusio...
Numerical solutions to fractional differential equations can be extremely computationally intensive ...
Numerical solutions to fractional differential equations can be extremely computationally intensive ...
The work is devoted to developing the parallel algorithms for solving the initial boundary problem f...
An efficient strategy for the numerical solution of time-fractional diffusion-reaction problems is d...
An efficient strategy for the numerical solution of time-fractional diffusion-reaction problems is d...
The work is devoted to developing the parallel algorithms for solving the initial boundary problem f...
Fractional calculus is the generalization of integer-order calculus to rational order. This subject ...
The computational complexity of one-dimensional time fractional reaction-diffusion equation is O(N2M...
Motivated by the weighted averaging method for training neural networks, we study the time-fractiona...
Machine Learning (ML) approach is a discussed research topic because of its benefit in several resea...
Machine Learning (ML) approach is a discussed research topic because of its benefit in several resea...
Machine Learning (ML) approach is a discussed research topic because of its benefit in several resea...
Fractional diffusion systems model a number of important applications, as for example water diffusio...
Fractional diffusion systems model a number of important applications, as for example water diffusio...
Fractional diffusion systems model a number of important applications, as for example water diffusio...
Numerical solutions to fractional differential equations can be extremely computationally intensive ...
Numerical solutions to fractional differential equations can be extremely computationally intensive ...
The work is devoted to developing the parallel algorithms for solving the initial boundary problem f...
An efficient strategy for the numerical solution of time-fractional diffusion-reaction problems is d...
An efficient strategy for the numerical solution of time-fractional diffusion-reaction problems is d...
The work is devoted to developing the parallel algorithms for solving the initial boundary problem f...
Fractional calculus is the generalization of integer-order calculus to rational order. This subject ...
The computational complexity of one-dimensional time fractional reaction-diffusion equation is O(N2M...
Motivated by the weighted averaging method for training neural networks, we study the time-fractiona...