A hierarchical Dirichlet language model

Author:

MacKay David J. C.,Peto Linda C. Bauman

Abstract

AbstractWe discuss a hierarchical probabilistic model whose predictions are similar to those of the popular language modelling procedure known as ‘smoothing’. A number of interesting differences from smoothing emerge. The insights gained from a probabilistic view of this problem point towards new directions for language modelling. The ideas of this paper are also applicable to other problems such as the modelling of triphomes in speech, and DNA and protein sequences in molecular biology. The new algorithm is compared with smoothing on a two million word corpus. The methods prove to be about equally accurate, with the hierarchical model using fewer computational resources.

Publisher

Cambridge University Press (CUP)

Subject

Artificial Intelligence,Linguistics and Language,Language and Linguistics,Software

Reference25 articles.

1. Peto L. B. (1994) A comparison of two smoothing methods for word bigram models. Technical Report CSRI-304, Computer Systems Research Institute, University of Toronto.

2. Bayesian Mixture Modeling

3. MacKay D. J. C. (1995d) Models for dice factories and amino acid probability vectors. In preparation.

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