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
Developing a phonetic lexicon for a language requires linguistic knowledge as well as human effort, ...
The creation of a pronunciation lexicon re-mains the most inefficient process in develop-ing an Auto...
We present a novel approach to speech processing based on the principle of pattern discovery. Our wo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The ability to infer linguistic structures from noisy speech streams seems to be an innate human cap...
Abstract The creation of a pronunciation lexicon remains the most inefficient process in developing ...
Does knowledge of language consist of symbolic rules? How do children learn and use their linguistic...
This paper models phonetic and phonological learning as a dependency between random space and genera...
During early language acquisition, infants must learn both a lexicon and a model of phonet-ics that ...
Discovering the linguistic structure of a language solely from spo-ken input asks for two steps: pho...
Abstract — In this paper we consider the unsupervised word discovery from phonetic input. We employ ...
When learning language, young children are faced with many seemingly formidable challenges, includin...
We present an algorithm that acquires words (pairings of phonological forms and semantic representat...
We present a framework for discovering acoustic units and generating an associated pronunciation lex...
We present an unsupervised learning algorithm that acquires a natural-language lexicon from raw sp...
Developing a phonetic lexicon for a language requires linguistic knowledge as well as human effort, ...
The creation of a pronunciation lexicon re-mains the most inefficient process in develop-ing an Auto...
We present a novel approach to speech processing based on the principle of pattern discovery. Our wo...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
The ability to infer linguistic structures from noisy speech streams seems to be an innate human cap...
Abstract The creation of a pronunciation lexicon remains the most inefficient process in developing ...
Does knowledge of language consist of symbolic rules? How do children learn and use their linguistic...
This paper models phonetic and phonological learning as a dependency between random space and genera...
During early language acquisition, infants must learn both a lexicon and a model of phonet-ics that ...
Discovering the linguistic structure of a language solely from spo-ken input asks for two steps: pho...
Abstract — In this paper we consider the unsupervised word discovery from phonetic input. We employ ...
When learning language, young children are faced with many seemingly formidable challenges, includin...
We present an algorithm that acquires words (pairings of phonological forms and semantic representat...
We present a framework for discovering acoustic units and generating an associated pronunciation lex...
We present an unsupervised learning algorithm that acquires a natural-language lexicon from raw sp...
Developing a phonetic lexicon for a language requires linguistic knowledge as well as human effort, ...
The creation of a pronunciation lexicon re-mains the most inefficient process in develop-ing an Auto...
We present a novel approach to speech processing based on the principle of pattern discovery. Our wo...