Elsevier

Cognition

Volume 118, Issue 2, February 2011, Pages 265-273
Cognition

Brief article
The impact of adjacent-dependencies and staged-input on the learnability of center-embedded hierarchical structures

https://doi.org/10.1016/j.cognition.2010.11.011Get rights and content
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Abstract

A theoretical debate in artificial grammar learning (AGL) regards the learnability of hierarchical structures. Recent studies using an AnBn grammar draw conflicting conclusions (Bahlmann and Friederici, 2006, De Vries et al., 2008). We argue that 2 conditions crucially affect learning AnBn structures: sufficient exposure to zero-level-of-embedding (0-LoE) exemplars and a staged-input. In 2 AGL experiments, learning was observed only when the training set was staged and contained 0-LoE exemplars. Our results might help understanding how natural complex structures are learned from exemplars.

Keywords

Starting small
Hierarchical structures
Center-embedding
Artificial grammar learning

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