Hybrid Optimized Back propagation Learning Algorithm For Multi-layer Perceptron

12/08/2012
by   Mriganka Chakraborty, et al.
0

Standard neural network based on general back propagation learning using delta method or gradient descent method has some great faults like poor optimization of error-weight objective function, low learning rate, instability .This paper introduces a hybrid supervised back propagation learning algorithm which uses trust-region method of unconstrained optimization of the error objective function by using quasi-newton method .This optimization leads to more accurate weight update system for minimizing the learning error during learning phase of multi-layer perceptron.[13][14][15] In this paper augmented line search is used for finding points which satisfies Wolfe condition. In this paper, This hybrid back propagation algorithm has strong global convergence properties & is robust & efficient in practice.

READ FULL TEXT
research
09/27/2020

Faster Biological Gradient Descent Learning

Back-propagation is a popular machine learning algorithm that uses gradi...
research
06/13/2019

Empowering swarm-based optimizers by multi-scale search to enhance Gradient Descent initialization performance

Swarm-based optimizers like Particle Swarm Optimization or Imperialistic...
research
02/17/2012

Extended Mixture of MLP Experts by Hybrid of Conjugate Gradient Method and Modified Cuckoo Search

This paper investigates a new method for improving the learning algorith...
research
11/05/2018

PILAE: A Non-gradient Descent Learning Scheme for Deep Feedforward Neural Networks

In this work, a non-gradient descent learning scheme is proposed for dee...
research
11/30/2021

Playing Ping Pong with Light: Directional Emission of White Light

Over the last decades, light-emitting diodes (LED) have replaced common ...
research
07/29/2020

Deriving Differential Target Propagation from Iterating Approximate Inverses

We show that a particular form of target propagation, i.e., relying on l...

Please sign up or login with your details

Forgot password? Click here to reset