On learning of HMM-Net classifiers

HMM-Net 분류기의 학습

  • 김상운 (명지대학교 컴퓨터공학과) ;
  • 오수환 (명지대학교 컴퓨터공학과)
  • Published : 1997.09.01

Abstract

The HMM-Net is an architecture for a neural network that implements a hidden markov model(HMM). The architecture is developed for the purpose of combining the classification power of neural networks with the time-domain modeling capability of HMMs. Criteria which are used for learning HMM_Net classifiers are maximum likelihood(ML), maximum mutual information (MMI), and minimization of mean squared error(MMSE). In this classifiers trained by the gradient descent algorithm with the above criteria. Experimental results for the isolated numbers from /young/to/koo/ show that in the binary inputs the performance of MMSE is better than the others, while in the fuzzy inputs the performance of MMI is better than the others.

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