Simultaneous Design of Feature Extractor and Pattern Classifer Using the Minimum Classification Error Training Algorithm

نویسندگان

  • K. Paliwal
  • M. Bacchiani
  • Y. Sagisaka
چکیده

~ Recently, a minimum classification error training algorithm has been proposed for minimizing the misclassification probability based on a given set of training samples using a generalized probabilistic descent method. This algorithm is a type of discriminative learning algorithm, but it approaches the objective of minimum classification error in a more direct manner than the conventional discriminative training algorithms. We apply this algorithm for simultaneous design of feature extractor and pattern classifier, and demonstrate some of its properties and advantages.

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تاریخ انتشار 2017