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Evan Kidd; Gabriela Garrido Rodríguez; Sasha Wilmoth; Javier E. Garrido Guillén; Rachel Nordlinger – Cognitive Science, 2025
Sentence production is a stage-like process of mapping a conceptual representation to the linear speech signal via grammatical rules. While the typological diversity of languages is vast and thus must necessarily influence sentence production, psycholinguistic studies of diverse languages are comparatively rare. Here, we present data from a…
Descriptors: Language Planning, Language Processing, Eye Movements, Word Order
Yadav, Himanshu; Vaidya, Ashwini; Shukla, Vishakha; Husain, Samar – Cognitive Science, 2020
Much previous work has suggested that word order preferences across languages can be explained by the dependency distance minimization constraint (Ferrer-i Cancho, 2008, 2015; Hawkins, 1994). Consistent with this claim, corpus studies have shown that the average distance between a head (e.g., verb) and its dependent (e.g., noun) tends to be short…
Descriptors: Word Order, Computational Linguistics, Contrastive Linguistics, Psycholinguistics
Culbertson, Jennifer; Smolensky, Paul – Cognitive Science, 2012
In this article, we develop a hierarchical Bayesian model of learning in a general type of artificial language-learning experiment in which learners are exposed to a mixture of grammars representing the variation present in real learners' input, particularly at times of language change. The modeling goal is to formalize and quantify hypothesized…
Descriptors: Models, Bayesian Statistics, Artificial Languages, Language Acquisition

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