Estimation of probabilities from sparse data for the language model component of a speech recognizer

Slava M. Katz(IBM Research - Thomas J. Watson Research Center)
IEEE Transactions on Acoustics Speech and Signal Processing
March 1, 1987
Cited by 1,652

Abstract

The description of a novel type of m-gram language model is given. The model offers, via a nonlinear recursive procedure, a computation and space efficient solution to the problem of estimating probabilities from sparse data. This solution compares favorably to other proposed methods. While the method has been developed for and successfully implemented in the IBM Real Time Speech Recognizers, its generality makes it applicable in other areas where the problem of estimating probabilities from sparse data arises.


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