Sciweavers

NAACL
2003

Active Learning for Classifying Phone Sequences from Unsupervised Phonotactic Models

13 years 5 months ago
Active Learning for Classifying Phone Sequences from Unsupervised Phonotactic Models
This paper describes an application of active learning methods to the classification of phone strings recognized using unsupervised phonotactic models. The only training data required for classification using these recognition methods is assigning class labels to the audio files. The work described here demonstrates that substantial savings in this effort can be obtained by actively selecting examples to be labeled using confidence scores from the BoosTexter classifier. The saving in class labeling effort is evaluated on two different spoken language system domains in terms both of the number of utterances to be labeled and the length of the labeled utterances in phones. We show that savings in labeling effort of around 30% can be obtained using active selection of examples.
Shona Douglas
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2003
Where NAACL
Authors Shona Douglas
Comments (0)