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Devitt, Michael; Porot, Nicolas – Cognitive Science, 2018
Experiments on theories of reference have mostly tested referential intuitions. We think that experiments should rather be testing linguistic usage. Substantive Aim (I): to test classical description theories of proper names against usage by "elicited production." Our results count decisively against those theories. Methodological Aim…
Descriptors: Language Usage, Nouns, Naming, Intuition
Scontras, Gregory; Badecker, William; Fedorenko, Evelina – Cognitive Science, 2017
In our article, "Syntactic complexity effects in sentence production" [Scontras, Badecker, Shank, Lim, & Fedorenko, 2015 (EJ1057757)], we reported two elicited production experiments and argued that there is a cost associated with planning and uttering syntactically complex, object-extracted structures that contain a non-local…
Descriptors: Syntax, Sentences, Experiments, Planning
van Deemter, Kees; Gatt, Albert; van der Sluis, Ielka; Power, Richard – Cognitive Science, 2012
This response discusses the experiment reported in Krahmer et al.'s Letter to the Editor of "Cognitive Science". We observe that their results do not tell us whether the Incremental Algorithm is better or worse than its competitors, and we speculate about implications for reference in complex domains, and for learning from "normal" (i.e.,…
Descriptors: Experiments, Natural Language Processing, Mathematics, Computational Linguistics