Tristan Ricoul
2022
DP-Parse: Finding Word Boundaries from Raw Speech with an Instance Lexicon
Robin Algayres
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Tristan Ricoul
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Julien Karadayi
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Hugo Laurençon
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Salah Zaiem
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Abdelrahman Mohamed
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Benoît Sagot
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Emmanuel Dupoux
Transactions of the Association for Computational Linguistics, Volume 10
Finding word boundaries in continuous speech is challenging as there is little or no equivalent of a ‘space’ delimiter between words. Popular Bayesian non-parametric models for text segmentation (Goldwater et al., 2006, 2009) use a Dirichlet process to jointly segment sentences and build a lexicon of word types. We introduce DP-Parse, which uses similar principles but only relies on an instance lexicon of word tokens, avoiding the clustering errors that arise with a lexicon of word types. On the Zero Resource Speech Benchmark 2017, our model sets a new speech segmentation state-of-the-art in 5 languages. The algorithm monotonically improves with better input representations, achieving yet higher scores when fed with weakly supervised inputs. Despite lacking a type lexicon, DP-Parse can be pipelined to a language model and learn semantic and syntactic representations as assessed by a new spoken word embedding benchmark. 1
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Co-authors
- Robin Algayres 1
- Julien Karadayi 1
- Hugo Laurençon 1
- Salah Zaiem 1
- Abdelrahman Mohamed 1
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