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Topic-based mixture language modelling

Published online by Cambridge University Press:  01 December 1999

YOSHIHIKO GOTOH
Affiliation:
Department of Computer Science, University of Sheffield, Regent Court, 211 Portobello Street, Sheffield S1 4DP, UK; e-mail: y.gotoh@dcs.shef.ac.uk, s.renals@dcs.shef.ac.uk
STEVE RENALS
Affiliation:
Department of Computer Science, University of Sheffield, Regent Court, 211 Portobello Street, Sheffield S1 4DP, UK; e-mail: y.gotoh@dcs.shef.ac.uk, s.renals@dcs.shef.ac.uk

Abstract

This paper describes an approach for constructing a mixture of language models based on simple statistical notions of semantics using probabilistic models developed for information retrieval. The approach encapsulates corpus-derived semantic information and is able to model varying styles of text. Using such information, the corpus texts are clustered in an unsupervised manner and a mixture of topic-specific language models is automatically created. The principal contribution of this work is to characterise the document space resulting from information retrieval techniques and to demonstrate the approach for mixture language modelling. A comparison is made between manual and automatic clustering in order to elucidate how the global content information is expressed in the space. We also compare (in terms of association with manual clustering and language modelling accuracy) alternative term-weighting schemes and the effect of singular value decomposition dimension reduction (latent semantic analysis). Test set perplexity results using the British National Corpus indicate that the approach can improve the potential of statistical language modelling. Using an adaptive procedure, the conventional model may be tuned to track text data with a slight increase in computational cost.

Type
Research Article
Copyright
© 1999 Cambridge University Press

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