Abstract:
In this paper, an evolving learning mechanism is proposed for general computing network model to make decisions in intelligent systems. The novel mechanism is performed b...Show MoreMetadata
Abstract:
In this paper, an evolving learning mechanism is proposed for general computing network model to make decisions in intelligent systems. The novel mechanism is performed by means of a set of computing cell operations such as self-generation, growth, self-division, and death. Under the mechanism, a computing network grows up to a mature network. A hidden cell in the network is defined as a condition matching-unit in response to a fuzzy sub-superspace in multiple-dimension input superspace. A sense-function is defined to represent connections from a hidden cell to input cells. The range and edge vagueness of the sense-function are determined by evolving learning mechanism when sample instances are presented to the network. This network is able to learn from a very few training instances to make decisions for unseen instances. The benchmark data sets from the UCI machine learning repository are applied to test the network and comparable results are obtained.
Date of Conference: 12-12 October 2005
Date Added to IEEE Xplore: 10 January 2006
Print ISBN:0-7803-9298-1
Print ISSN: 1062-922X
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Digital Networks ,
- Learning Mechanisms ,
- Generative Network Model ,
- Benchmark Datasets ,
- UCI Machine Learning Repository ,
- Neural Network ,
- Learning Algorithms ,
- Number Of Values ,
- Output Layer ,
- Hidden Layer ,
- Real Numbers ,
- Transfer Function ,
- Number Range ,
- Set Of Cells ,
- Neuron Model ,
- Cell Yield ,
- Traditional Concept ,
- Neural Network Classifier ,
- Lower Edge ,
- Upper Edge ,
- Decision Value ,
- Matching Degree ,
- Fuzzy Rules ,
- Fuzzy Neural Network
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Digital Networks ,
- Learning Mechanisms ,
- Generative Network Model ,
- Benchmark Datasets ,
- UCI Machine Learning Repository ,
- Neural Network ,
- Learning Algorithms ,
- Number Of Values ,
- Output Layer ,
- Hidden Layer ,
- Real Numbers ,
- Transfer Function ,
- Number Range ,
- Set Of Cells ,
- Neuron Model ,
- Cell Yield ,
- Traditional Concept ,
- Neural Network Classifier ,
- Lower Edge ,
- Upper Edge ,
- Decision Value ,
- Matching Degree ,
- Fuzzy Rules ,
- Fuzzy Neural Network
- Author Keywords