Abstract:
This paper describes a general fuzzy min-max (GFMM) neural network which is a generalization and extension of the fuzzy min-max clustering and classification algorithms o...Show MoreMetadata
Abstract:
This paper describes a general fuzzy min-max (GFMM) neural network which is a generalization and extension of the fuzzy min-max clustering and classification algorithms of Simpson (1992, 1993). The GFMM method combines supervised and unsupervised learning in a single training algorithm. The fusion of clustering and classification resulted in an algorithm that can be used as pure clustering, pure classification, or hybrid clustering classification. It exhibits a property of finding decision boundaries between classes while clustering patterns that cannot be said to belong to any of existing classes. Similarly to the original algorithms, the hyperbox fuzzy sets are used as a representation of clusters and classes. Learning is usually completed in a few passes and consists of placing and adjusting the hyperboxes in the pattern space; this is an expansion-contraction process. The classification results can be crisp or fuzzy. New data can be included without the need for retraining. While retaining all the interesting features of the original algorithms, a number of modifications to their definition have been made in order to accommodate fuzzy input patterns in the form of lower and upper bounds, combine the supervised and unsupervised learning, and improve the effectiveness of operations. A detailed account of the GFMM neural network, its comparison with the Simpson's fuzzy min-max neural networks, a set of examples, and an application to the leakage detection and identification in water distribution systems are given.
Published in: IEEE Transactions on Neural Networks ( Volume: 11, Issue: 3, May 2000)
DOI: 10.1109/72.846747
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Neural Network Classifier ,
- Fuzzy Neural Network ,
- Fuzzy Min Max ,
- Upper Bound ,
- Classification Algorithms ,
- Clustering Algorithm ,
- Unsupervised Learning ,
- Fuzzy Set ,
- Water Distribution ,
- Original Algorithm ,
- Decision Boundary ,
- Representative Class ,
- Cluster Representatives ,
- Single Algorithm ,
- Patterns In Space ,
- Input Patterns ,
- Fuzzy Clustering ,
- Water Distribution Networks ,
- Leak Detection ,
- Dimensional Space ,
- Membership Function ,
- Membership Values ,
- Training Data ,
- Lower Bound Value ,
- Number Of Alternatives ,
- Maximum Size ,
- Test Dataset ,
- Pattern Recognition Problems ,
- Types Of Inputs
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Neural Network Classifier ,
- Fuzzy Neural Network ,
- Fuzzy Min Max ,
- Upper Bound ,
- Classification Algorithms ,
- Clustering Algorithm ,
- Unsupervised Learning ,
- Fuzzy Set ,
- Water Distribution ,
- Original Algorithm ,
- Decision Boundary ,
- Representative Class ,
- Cluster Representatives ,
- Single Algorithm ,
- Patterns In Space ,
- Input Patterns ,
- Fuzzy Clustering ,
- Water Distribution Networks ,
- Leak Detection ,
- Dimensional Space ,
- Membership Function ,
- Membership Values ,
- Training Data ,
- Lower Bound Value ,
- Number Of Alternatives ,
- Maximum Size ,
- Test Dataset ,
- Pattern Recognition Problems ,
- Types Of Inputs