Title :
Discriminative training of stochastic Markov graphs for speech recognition
Author :
Wolfertstetter, F. ; Ruske, G.
Author_Institution :
Inst. for Human-Machine-Commun., Munich Univ. of Technol., Germany
Abstract :
This paper proposes the application of discriminative training techniques based on the generalized probabilistic descent (GPD) approach to stochastic Markov graphs (SMGs), a generalization of mixture-state hidden Markov models (HMMs), describing the constraints in the acoustic structure of speech as a graph consisting of nodes, each containing a base function, and a transition network between the nodes. State-specific weights modeling the classification relevance of the corresponding states and a transition weight representing the ratio between transitions and emissions are trained in addition to the standard parameters of the models. The experiments show, that discriminatively trained SMGs outperform discriminatively trained mixture-state HMMs with approximately the same number of parameters
Keywords :
graph theory; hidden Markov models; parameter estimation; probability; speech recognition; acoustic structure constraints; base function; discriminative training; discriminatively trained SMG; discriminatively trained mixture-state HMM; experiments; generalized probabilistic descent; mixture-state hidden Markov models; model parameters; nodes; speech recognition; state-specific weights; stochastic Markov graphs; transition network; transition weight; Acoustic applications; Acoustic emission; Cost function; Electronic mail; Equations; Gaussian processes; Hidden Markov models; Speech recognition; Stochastic processes; Viterbi algorithm;
Conference_Titel :
Acoustics, Speech, and Signal Processing, 1996. ICASSP-96. Conference Proceedings., 1996 IEEE International Conference on
Print_ISBN :
0-7803-3192-3
DOI :
10.1109/ICASSP.1996.543187