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Unsupervised Lexicon Discovery from Acoustic Input

2015-01-01TACL 2015Unverified0· sign in to hype

Chia-Ying Lee, Timothy J. O{'}Donnell, James Glass

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Abstract

We present a model of unsupervised phonological lexicon discovery---the problem of simultaneously learning phoneme-like and word-like units from acoustic input. Our model builds on earlier models of unsupervised phone-like unit discovery from acoustic data (Lee and Glass, 2012), and unsupervised symbolic lexicon discovery using the Adaptor Grammar framework (Johnson et al., 2006), integrating these earlier approaches using a probabilistic model of phonological variation. We show that the model is competitive with state-of-the-art spoken term discovery systems, and present analyses exploring the model's behavior and the kinds of linguistic structures it learns.

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