Title of article :
The probabilistic analysis of language acquisition: Theoretical, computational, and experimental analysis
Author/Authors :
Hsu، نويسنده , , Anne S. and Chater، نويسنده , , Nick and Vitلnyi، نويسنده , , Paul M.B.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
11
From page :
380
To page :
390
Abstract :
There is much debate over the degree to which language learning is governed by innate language-specific biases, or acquired through cognition-general principles. Here we examine the probabilistic language acquisition hypothesis on three levels: We outline a novel theoretical result showing that it is possible to learn the exact generative model underlying a wide class of languages, purely from observing samples of the language. We then describe a recently proposed practical framework, which quantifies natural language learnability, allowing specific learnability predictions to be made for the first time. In previous work, this framework was used to make learnability predictions for a wide variety of linguistic constructions, for which learnability has been much debated. Here, we present a new experiment which tests these learnability predictions. We find that our experimental results support the possibility that these linguistic constructions are acquired probabilistically from cognition-general principles.
Keywords :
No negative evidence , Poverty of the stimulus , Minimum Description Length , Bayesian models , Simplicity principle , Natural language , probabilistic models , Identification in the limit , Child language acquisition
Journal title :
Cognition
Serial Year :
2011
Journal title :
Cognition
Record number :
2077199
Link To Document :
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