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Communication Dans Un Congrès Année : 2020

Modelling Perceptual Effects of Phonology with ASR Systems

Résumé

This paper explores the minimal knowledge a listener needs to compensate for phonological assimilation, one kind of phonological process responsible for variation in speech. We used standard automatic speech recognition models to represent English and French listeners. We found that, first, some types of models show language-specific assimilation patterns comparable to those shown by human listeners. Like English listeners, when trained on English, the models compensate more for place assimilation than for voicing assimilation, and like French listeners, the models show the opposite pattern when trained on French. Second, the models which best predict the human pattern use contextually-sensitive acoustic models and language models, which capture allophony and phonotactics, but do not make use of higher-level knowledge of a lexicon or word boundaries. Finally, some models overcompensate for assimilation, showing a (super-human) ability to recover the underlying form even in the absence of the triggering phonological context, pointing to an incomplete neutralization not exploited by human listeners.
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Dates et versions

hal-03070281 , version 1 (15-12-2020)

Identifiants

  • HAL Id : hal-03070281 , version 1

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Bing ' Er Jiang, Ewan Dunbar, Morgan Sonderegger, Meghan Clayards, Emmanuel Dupoux. Modelling Perceptual Effects of Phonology with ASR Systems. CogSci 2020 - 42nd Annual Virtual Meeting of the Cognitive Science Society, Jul 2020, Virtual, France. ⟨hal-03070281⟩
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