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Feature Statistics Modulate the Activation of Meaning During Spoken Word Processing.

Published version
Peer-reviewed

Repository DOI


Type

Article

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Authors

Devereux, Barry J 
Taylor, Kirsten I 
Randall, Billi 
Geertzen, Jeroen 
Tyler, Lorraine K 

Abstract

Understanding spoken words involves a rapid mapping from speech to conceptual representations. One distributed feature-based conceptual account assumes that the statistical characteristics of concepts' features--the number of concepts they occur in (distinctiveness/sharedness) and likelihood of co-occurrence (correlational strength)--determine conceptual activation. To test these claims, we investigated the role of distinctiveness/sharedness and correlational strength in speech-to-meaning mapping, using a lexical decision task and computational simulations. Responses were faster for concepts with higher sharedness, suggesting that shared features are facilitatory in tasks like lexical decision that require access to them. Correlational strength facilitated responses for slower participants, suggesting a time-sensitive co-occurrence-driven settling mechanism. The computational simulation showed similar effects, with early effects of shared features and later effects of correlational strength. These results support a general-to-specific account of conceptual processing, whereby early activation of shared features is followed by the gradual emergence of a specific target representation.

Description

Keywords

Attractor networks, Concepts, Conceptual structure, Connectionist modeling, Lexical decision, Lexical semantics, Semantic features, Spoken word processing, Adolescent, Adult, Comprehension, Computer Simulation, Concept Formation, Humans, Models, Theoretical, Reaction Time, Speech, Time Factors, Young Adult

Journal Title

Cogn Sci

Conference Name

Journal ISSN

0364-0213
1551-6709

Volume Title

40

Publisher

Wiley
Sponsorship
European Research Council (249640)
This work was supported by a European Research Council Advanced Investigator grant (under the European Community's Seventh Framework Programme (FP7/2007-2013/ ERC Grant agreement no 249640) to LKT, and a Marie Curie Intra-European Fellowship and Swiss National Science Foundation Ambizione Fellowship to KIT. We thank Ken McRae and colleagues for making their property norm data available. We are very grateful to George Cree and Chris McNorgan for providing us with the MikeNet implementation of their model.