Title of article
Rapid learning of syllable classes from a perceptually continuous speech stream
Author/Authors
Endress، نويسنده , , Ansgar D. and Bonatti، نويسنده , , Luca L. Ghezzi، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
53
From page
247
To page
299
Abstract
To learn a language, speakers must learn its words and rules from fluent speech; in particular, they must learn dependencies among linguistic classes. We show that when familiarized with a short artificial, subliminally bracketed stream, participants can learn relations about the structure of its words, which specify the classes of syllables occurring in first and last word positions. By studying the effect of familiarization length, we compared the general predictions of associative theories of learning and those of models postulating separate mechanisms for quickly extracting the word structure and for tracking the syllable distribution in the stream. As predicted by the dual-mechanism model, the preference for structurally correct items was negatively correlated with the familiarization length. This result is difficult to explain by purely associative schemes; an extensive set of neural network simulations confirmed this difficulty. Still, we show that powerful statistical computations operating on the stream are available to our participants, as they are sensitive to co-occurrence statistics among non-adjacent syllables. We suggest that different learning mechanisms analyze speech on-line: A rapid mechanism extracting structural information about the stream, and a slower mechanism detecting statistical regularities among the items occurring in it.
Keywords
artificial grammar learning , Language acquisition , Symbol manipulation , Dual mechanism models
Journal title
Cognition
Serial Year
2007
Journal title
Cognition
Record number
2076080
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