A Computational Cognitive Model of Syntactic Priming

Research output: Contribution to journalArticlepeer-review

Abstract / Description of output

The psycholinguistic literature has identified two syntactic adaptation effects in language production: rapidly decaying short-term priming and long-lasting adaptation. To explain both effects, we present an ACT-R model of syntactic priming based on a wide-coverage, lexicalized syntactic theory that explains priming as facilitation of lexical access. In this model, two well-established ACT-R mechanisms, base-level learning and spreading activation, account for long-term adaptation and short-term priming, respectively. Our model simulates incremental language production and in a series of modeling studies, we show that it accounts for (a) the inverse frequency interaction; (b) the absence of a decay in long-term priming; and (c) the cumulativity of long-term adaptation. The model also explains the lexical boost effect and the fact that it only applies to short-term priming. We also present corpus data that verify a prediction of the model, that is, that the lexical boost affects all lexical material, rather than just heads.
Original languageEnglish
Pages (from-to)587-637
Number of pages51
JournalCognitive Science: A Multidisciplinary Journal
Volume35
Issue number4
DOIs
Publication statusPublished - May 2011

Keywords / Materials (for Non-textual outputs)

  • Syntactic priming
  • Adaptation
  • Cognitive architectures
  • ACT-R
  • Categorial grammar
  • Incrementality

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