Convolutional neural networks with fractional order gradient method

05/14/2019
by   Dian Sheng, et al.
0

This paper proposes a fractional order gradient method for the backward propagation of convolutional neural networks. To overcome the problem that fractional order gradient method cannot converge to real extreme point, a simplified fractional order gradient method is designed based on Caputo's definition. The parameters within layers are updated by the designed gradient method, but the propagations between layers still use integer order gradients, and thus the complicated derivatives of composite functions are avoided and the chain rule will be kept. By connecting every layers in series and adding loss functions, the proposed convolutional neural networks can be trained smoothly according to various tasks. Some practical experiments are carried out in order to demonstrate the effectiveness of neural networks at last.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/01/2022

Using a novel fractional-order gradient method for CNN back-propagation

Computer-aided diagnosis tools have experienced rapid growth and develop...
research
01/05/2020

Adaptive fractional order graph neural network

This paper proposes adaptive fractional order graph neural network (AFGN...
research
05/31/2023

Fractional weak adversarial networks for the stationary fractional advection dispersion equations

In this article, we propose the fractional weak adversarial networks (f-...
research
08/15/2016

A Geometric Framework for Convolutional Neural Networks

In this paper, a geometric framework for neural networks is proposed. Th...
research
10/11/2022

Parameter estimation of the homodyned K distribution based on neural networks and trainable fractional-order moments

Homodyned K (HK) distribution has been widely used to describe the scatt...
research
08/05/2021

Deep Neural Networks and PIDE discretizations

In this paper, we propose neural networks that tackle the problems of st...

Please sign up or login with your details

Forgot password? Click here to reset