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Setnes et al., 1999 - Google Patents

Fuzzy relational classifier trained by fuzzy clustering

Setnes et al., 1999

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Document ID
16633048119619206282
Author
Setnes M
Babuska R
Publication year
Publication venue
IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics)

External Links

Snippet

A novel approach to nonlinear classification is presented, in the training phase of the classifier, the training data is first clustered in an unsupervised way by fuzzy c-means or a similar algorithm. The class labels are not used in this step. Then, a fuzzy relation between …
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