Abstract:
Backpropagation (BP) learning algorithm is the most widely used supervised learning technique that is extensively applied in the training of multi-layer feed-forward neur...Show MoreMetadata
Abstract:
Backpropagation (BP) learning algorithm is the most widely used supervised learning technique that is extensively applied in the training of multi-layer feed-forward neural networks. Although many modifications of BP have been proposed to speed up the learning of the original BP, they seldom address the local minimum and the flat-spot problem. This paper proposes a new algorithm called Local-minimum and Flat-spot Problem Solver (LFPS) to solve these two problems. It uses a systematic approach to check whether a learning process is trapped by a local minimum or a flat-spot area, and then escape from it. Thus, a learning process using LFPS can keep finding an appropriate way to converge to the global minimum. The performance investigation shows that the proposed algorithm always converges in different learning problems (applications) whereas other popular fast learning algorithms sometimes give very poor global convergence capabilities.
Date of Conference: 04-09 August 2013
Date Added to IEEE Xplore: 09 January 2014
ISBN Information:
ISSN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Learning Algorithms ,
- Feed-forward Network ,
- Fast Algorithm ,
- Convergence Capability ,
- Fast Learning Algorithm ,
- Global Convergence Capability ,
- Learning Process ,
- Local Minima ,
- Learning Problem ,
- Global Minimum ,
- Neural Network Training ,
- Popular Algorithms ,
- Poor Capability ,
- Supervised Learning Techniques ,
- Poor Convergence ,
- Learning Rate ,
- Step Size ,
- Convergence Rate ,
- Systematic Errors ,
- Number Of Visits ,
- Local Minimum Problem ,
- New Start ,
- Hidden Nodes ,
- Backpropagation Algorithm ,
- Local Problems ,
- Different Kinds Of Problems ,
- Input Patterns ,
- Error Signal ,
- Change In Error ,
- Small Step Size
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Learning Algorithms ,
- Feed-forward Network ,
- Fast Algorithm ,
- Convergence Capability ,
- Fast Learning Algorithm ,
- Global Convergence Capability ,
- Learning Process ,
- Local Minima ,
- Learning Problem ,
- Global Minimum ,
- Neural Network Training ,
- Popular Algorithms ,
- Poor Capability ,
- Supervised Learning Techniques ,
- Poor Convergence ,
- Learning Rate ,
- Step Size ,
- Convergence Rate ,
- Systematic Errors ,
- Number Of Visits ,
- Local Minimum Problem ,
- New Start ,
- Hidden Nodes ,
- Backpropagation Algorithm ,
- Local Problems ,
- Different Kinds Of Problems ,
- Input Patterns ,
- Error Signal ,
- Change In Error ,
- Small Step Size