Fuzzy Clustering Networks : Design Criteria for Approximation and Prediction
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概要
- 論文の詳細を見る
In previous papers the building of hierarchical networks made up of components using fuzzy rules was presented. It was demonstrated that this approach could be used to construct networks to solve classification problems, and that in many cases these networks were computationally less expensive and performed at least as well as existing approaches based on feedforward neural networks. It has also been demonstrated how this approach could be extended to real-valued problems, such as function approximation and time series prediction. This paper investigates the problem of choosing the best network for real-valued approximation problems. Firstly, the nature of the network parameters, how they are interrelated, and how they affect the performance of the system are clarified. Then we address the problem of choosing the best values of these parameters. We present two model selection tools in this regard, the first using a simple statistical model of the network, and the second using structural information about the network components. The resulting network selection methods are demonstrated and their performance tested on several benchmark and applied problems. The conclusions look at future research issues for further improving the performance of the clustering network.
- 社団法人電子情報通信学会の論文
- 1996-01-25
著者
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Mitchell John
Hitachi Dublin Laboratory Trinity College Dublin
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ABE SHIGEO
Hitachi Research Laboratory, Hitachi, Ltd.
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Abe S
Kobe Univ. Nada‐shi Jpn
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Abe Shigeo
Hitachi Research Laboratory Hitachi Ltd.
関連論文
- How Neural Networks for Pattern Recognition Can Be Synthesized
- Fuzzy Clustering Networks : Design Criteria for Approximation and Prediction
- Fuzzy Rule Extraction with Optimized Hyperboxes for Approximating Class Regions
- Optimizing Composite Neural Networks for Very Hard Classification Problems