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The acoustic modeling problem in automatic speech recognition is estimated with the specific goal of unifying discrete and continuous parameter approaches. The authors consider a class of very general hidden Markov models which can accommodate sequences of information-bearing acoustic feature vectors lying either in a discrete or in a continuous space. More generally, the new class allows one to represent the prototypes in an assumption-limited, yet convenient, way, as (tied) mixtures of simple multivariate densities. Speech recognition experiments, reported for a large (5000-word) vocabulary office correspondence task, demonstrate some of the benefits associated with this technique.>
Bellegarda et al. (Mon,) studied this question.