Title of article
A computational model of word segmentation from continuous speech using transitional probabilities of atomic acoustic events
Author/Authors
Rنsنnen، نويسنده , , Okko، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
28
From page
149
To page
176
Abstract
Word segmentation from continuous speech is a difficult task that is faced by human infants when they start to learn their native language. Several studies indicate that infants might use several different cues to solve this problem, including intonation, linguistic stress, and transitional probabilities between subsequent speech sounds. In this work, a computational model for word segmentation and learning of primitive lexical items from continuous speech is presented. The model does not utilize any a priori linguistic or phonemic knowledge such as phones, phonemes or articulatory gestures, but computes transitional probabilities between atomic acoustic events in order to detect recurring patterns in speech. Experiments with the model show that word segmentation is possible without any knowledge of linguistically relevant structures, and that the learned ungrounded word models show a relatively high selectivity towards specific words or frequently co-occurring combinations of short words.
Keywords
Language acquisition , Distributional learning , unsupervised learning , Word segmentation
Journal title
Cognition
Serial Year
2011
Journal title
Cognition
Record number
2077168
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