1. Implicit Acquisition of Grammars With Crossed and Nested Non-Adjacent Dependencies: Investigating the Push-Down Stack Model
- Author
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Martin Ingvar, Peter Hagoort, Julia Udden, and Karl Magnus Petersson
- Subjects
Adult ,Male ,110 000 Neurocognition of Language ,110 012 Social cognition of verbal communication ,Artificial grammar learning ,Computer science ,Cognitive Neuroscience ,media_common.quotation_subject ,Nonlocal musical rules ,A neurocomputational model for the Processing of Linguistic Utterances based on the Unification-Space architecture [110 007 PLUS] ,110 013 Binding and the MUC-model ,Experimental and Cognitive Psychology ,Models, Psychological ,computer.software_genre ,Syntactic structure ,Rule-based machine translation ,Memory ,Artificial Intelligence ,Humans ,Learning ,110 014 Public activities ,Auxiliary memory ,Language ,media_common ,Psycholinguistics ,Syntax (programming languages) ,Grammar ,business.industry ,Language acquisition ,Implicit learning ,Dependency theory (database theory) ,Female ,Language and Communication [DI-BCB_DCC_Theme 1] ,Artificial intelligence ,110 009 The human brain and Chinese prosody ,business ,computer ,Natural language processing - Abstract
A recent hypothesis in empirical brain research on language is that the fundamental difference between animal and human communication systems is captured by the distinction between finite-state and more complex phrase-structure grammars, such as context-free and context-sensitive grammars. However, the relevance of this distinction for the study of language as a neurobiological system has been questioned and it has been suggested that a more relevant and partly analogous distinction is that between non-adjacent and adjacent dependencies. Online memory resources are central to the processing of non-adjacent dependencies as information has to be maintained across intervening material. One proposal is that an external memory device in the form of a limited push-down stack is used to process non-adjacent dependencies. We tested this hypothesis in an artificial grammar learning paradigm where subjects acquired non-adjacent dependencies implicitly. Generally, we found no qualitative differences between the acquisition of non-adjacent dependencies and adjacent dependencies. This suggests that although the acquisition of non-adjacent dependencies requires more exposure to the acquisition material, it utilizes the same mechanisms used for acquiring adjacent dependencies. We challenge the push-down stack model further by testing its processing predictions for nested and crossed multiple non-adjacent dependencies. The push-down stack model is partly supported by the results, and we suggest that stack-like properties are some among many natural properties characterizing the underlying neurophysiological mechanisms that implement the online memory resources used in language and structured sequence processing. info:eu-repo/semantics/publishedVersion
- Published
- 2012
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