Conference Proceedings

Learning a Translation Model from Word Lattices

O Adams, G Neubig, T Cohn, S Bird

Proceedings of Interspeech-16 | International Speech Communication Association | Published : 2016

Abstract

Translation models have been used to improve automatic speech recognition when speech input is paired with a written translation, primarily for the task of computer-aided translation. Existing approaches require large amounts of parallel text for training the translation models, but for many language pairs this data is not available. We propose a model for learning lexical translation parameters directly from the word lattices for which a transcription is sought. The model is expressed through composition of each lattice with a weighted finite-state transducer representing the translation model, where inference is performed by sampling paths through the composed finitestate transducer. We sh..

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