Fuzzy-Pattern-Classifier Training with Small Data Sets

نویسندگان

  • Uwe Mönks
  • Denis Petker
  • Volker Lohweg
چکیده

It is likely in real-world applications that only little data is available for training a knowledge-based system. We present a method for automatically training the knowledge-representing membership functions of a Fuzzy-Pattern-Classification system that works also when only little data is available and the universal set is described insufficiently. Actually, this paper presents how the Modified-Fuzzy-Pattern-Classifier’s membership functions are trained using probability distribution functions.

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تاریخ انتشار 2010