Sciweavers

INTERSPEECH
2010

Modeling pronunciation variation with context-dependent articulatory feature decision trees

12 years 11 months ago
Modeling pronunciation variation with context-dependent articulatory feature decision trees
We consider the problem of predicting the surface pronunciations of a word in conversational speech, using a model of pronunciation variation based on articulatory features. We build context-dependent decision trees for both phone-based and feature-based models, and compare their perplexities on conversational data from the Switchboard Transcription Project. We find that a fully-factored model, with separate decision trees for each articulatory feature, does not perform well, but a feature-based model using a smaller number of "feature bundles" outperforms both the fully-factored model and a phonebased model. The articulatory feature-based decision trees are also much more robust to reductions in training data. We also analyze the usefulness of various context variables.
Sam Bowman, Karen Livescu
Added 18 May 2011
Updated 18 May 2011
Type Journal
Year 2010
Where INTERSPEECH
Authors Sam Bowman, Karen Livescu
Comments (0)