Title of article :
Modelling unsupervised online-learning of artificial grammars: Linking implicit and statistical learning
Author/Authors :
Majka Kaiser-Rohrmeier، نويسنده , , Martin A. and Cross، نويسنده , , Ian، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
13
From page :
155
To page :
167
Abstract :
Humans rapidly learn complex structures in various domains. Findings of above-chance performance of some untrained control groups in artificial grammar learning studies raise questions about the extent to which learning can occur in an untrained, unsupervised testing situation with both correct and incorrect structures. The plausibility of unsupervised online-learning effects was modelled with n-gram, chunking and simple recurrent network models. A novel evaluation framework was applied, which alternates forced binary grammaticality judgments and subsequent learning of the same stimulus. Our results indicate a strong online learning effect for n-gram and chunking models and a weaker effect for simple recurrent network models. Such findings suggest that online learning is a plausible effect of statistical chunk learning that is possible when ungrammatical sequences contain a large proportion of grammatical chunks. Such common effects of continuous statistical learning may underlie statistical and implicit learning paradigms and raise implications for study design and testing methodologies.
Keywords :
Implicit Learning , Online learning , unsupervised learning , Statistical Learning , artificial grammar learning , Incidental learning , Computational modelling , Simple Recurrent Network , N-gram model , Competitive chunking
Journal title :
Consciousness and Cognition
Serial Year :
2014
Journal title :
Consciousness and Cognition
Record number :
2292786
Link To Document :
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