Publication detail

Bayesian joint-sequence models for grapheme-to-phoneme conversion

HANNEMANN, M. TRMAL, J. ONDEL YANG, L. KESIRAJU, S. BURGET, L.

Original Title

Bayesian joint-sequence models for grapheme-to-phoneme conversion

Type

conference paper

Language

English

Original Abstract

We describe a fully Bayesian approach to grapheme-to-phoneme conversion based on the joint-sequence model (JSM). Usually, standard smoothed n-gram language models (LM, e.g. Kneser-Ney) are used with JSMs to model graphone sequences (joint graphemephoneme pairs). However, we take a Bayesian approach using a hierarchical Pitman-Yor-Process LM. This provides an elegant alternative to using smoothing techniques to avoid over-training. No held-out sets and complex parameter tuning is necessary, and several convergence problems encountered in the discounted Expectation- Maximization (as used in the smoothed JSMs) are avoided. Every step is modeled by weighted finite state transducers and implemented with standard operations from the OpenFST toolkit. We evaluate our model on a standard data set (CMUdict), where it gives comparable results to the previously reported smoothed JSMs in terms of phoneme-error rate while requiring a much smaller training/ testing time. Most importantly, our model can be used in a Bayesian framework and for (partly) un-supervised training.

Keywords

Bayesian approach, joint-sequence models, weighted finite state transducers, letter-to-sound, grapheme-tophoneme conversion, hierarchical Pitman-Yor-Process

Authors

HANNEMANN, M.; TRMAL, J.; ONDEL YANG, L.; KESIRAJU, S.; BURGET, L.

Released

5. 3. 2017

Publisher

IEEE Signal Processing Society

Location

New Orleans

ISBN

978-1-5090-4117-6

Book

Proceedings of ICASSP 2017

Pages from

2836

Pages to

2840

Pages count

5

URL

BibTex

@inproceedings{BUT144449,
  author="Mirko {Hannemann} and Jan {Trmal} and Lucas Antoine Francois {Ondel} and Santosh {Kesiraju} and Lukáš {Burget}",
  title="Bayesian joint-sequence models for grapheme-to-phoneme conversion",
  booktitle="Proceedings of ICASSP 2017",
  year="2017",
  pages="2836--2840",
  publisher="IEEE Signal Processing Society",
  address="New Orleans",
  doi="10.1109/ICASSP.2017.7952674",
  isbn="978-1-5090-4117-6",
  url="https://www.fit.vut.cz/research/publication/11469/"
}