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NAACL
2010

Bayesian Inference for Finite-State Transducers

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Bayesian Inference for Finite-State Transducers
We describe a Bayesian inference algorithm that can be used to train any cascade of weighted finite-state transducers on end-toend data. We also investigate the problem of automatically selecting from among multiple training runs. Our experiments on four different tasks demonstrate the genericity of this framework, and, where applicable, large improvements in performance over EM. We also show, for unsupervised part-of-speech tagging, that automatic run selection gives a large improvement over previous Bayesian approaches.
David Chiang, Jonathan Graehl, Kevin Knight, Adam
Added 14 Feb 2011
Updated 14 Feb 2011
Type Journal
Year 2010
Where NAACL
Authors David Chiang, Jonathan Graehl, Kevin Knight, Adam Pauls, Sujith Ravi
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