Difference between revisions of "Lehnen et al., ICASSP 2011. Incorporating Alignments into Conditional Random Fields for Grapheme to Phoneme Conversion"
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− | They model the tuple <math> (t_1^M, a_1^M) </math> by a projection using the BIO labeling scheme, allowing for 1-to-1 or many-to-one monotonic alignment scheme. | + | They model the tuple <math> (t_1^M, a_1^M) </math> by a projection using the BIO labeling scheme, allowing for a 1-to-1 or many-to-one monotonic alignment scheme. |
+ | === Training === | ||
+ | The CRF model incorporating alignment as a hidden variable can be trained in two ways, | ||
+ | * Maximization approach | ||
+ | * Summation approach | ||
+ | ==== Maximization Approach ==== | ||
+ | This approach assumes a linear segmentation at the beginning and trains the CRF using an [[Expectation_Maximization|Expectation-Maximization]] like algorithm. | ||
== Experiments and Results == | == Experiments and Results == | ||
== Related Papers == | == Related Papers == |
Revision as of 22:30, 24 September 2011
Contents
Citation
Patrick Lehnen, Stefan Hahn, Andreas Guta and Hermann Ney. 2011. Incorporating Alignments into Conditional Random Fields for Grapheme to Phoneme Conversion. In Proceedings of the IEEE International Conference on Acoustics, Speech, and Signal Processing, ICASSP-2011.
Online Version
Incorporating Alignments into Conditional Random Fields for Grapheme to Phoneme Conversion
Summary
The authors present a novel approach for better grapheme to phoneme (g2p) conversion. They argue that alignments are crucial in g2p conversion and are usually added by external models. Thus, the authors introduce an approach by which the alignment generation step can be efficiently added into the CRF training process. This is achieved in two ways. One in which linear segmentation is considered and the other in which all possible alignments given some constraints are incorporated in the CRF model. Apart from the standard CRF training process, the authors also introduce alignment as a hidden variable in the model.
Method
A conditional random field is modeled as:
Alignments
The authors add alignment by modeling it as a hidden variable, in CRFs as follows,
They model the tuple by a projection using the BIO labeling scheme, allowing for a 1-to-1 or many-to-one monotonic alignment scheme.
Training
The CRF model incorporating alignment as a hidden variable can be trained in two ways,
- Maximization approach
- Summation approach
Maximization Approach
This approach assumes a linear segmentation at the beginning and trains the CRF using an Expectation-Maximization like algorithm.