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  1. Extreme classification.Sebastian Fedden & Greville G. Corbett - 2018 - Cognitive Linguistics 29 (4):633-675.
    Journal Name: Cognitive Linguistics Issue: Ahead of print.
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  • Similarity-Based Interference and the Acquisition of Adjunct Control.Juliana Gerard, Jeffrey Lidz, Shalom Zuckerman & Manuela Pinto - 2017 - Frontiers in Psychology 8.
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  • The emergence of word-internal repetition through iterated learning: Explaining the mismatch between learning biases and language design.Mitsuhiko Ota, Aitor San José & Kenny Smith - 2021 - Cognition 210 (C):104585.
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  • Five Ways in Which Computational Modeling Can Help Advance Cognitive Science: Lessons From Artificial Grammar Learning.Willem Zuidema, Robert M. French, Raquel G. Alhama, Kevin Ellis, Timothy J. O'Donnell, Tim Sainburg & Timothy Q. Gentner - 2020 - Topics in Cognitive Science 12 (3):925-941.
    Zuidema et al. illustrate how empirical AGL studies can benefit from computational models and techniques. Computational models can help clarifying theories, and thus in delineating research questions, but also in facilitating experimental design, stimulus generation, and data analysis. The authors show, with a series of examples, how computational modeling can be integrated with empirical AGL approaches, and how model selection techniques can indicate the most likely model to explain experimental outcomes.
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  • Parameter Inference for Computational Cognitive Models with Approximate Bayesian Computation.Antti Kangasrääsiö, Jussi P. P. Jokinen, Antti Oulasvirta, Andrew Howes & Samuel Kaski - 2019 - Cognitive Science 43 (6):e12738.
    This paper addresses a common challenge with computational cognitive models: identifying parameter values that are both theoretically plausible and generate predictions that match well with empirical data. While computational models can offer deep explanations of cognition, they are computationally complex and often out of reach of traditional parameter fitting methods. Weak methodology may lead to premature rejection of valid models or to acceptance of models that might otherwise be falsified. Mathematically robust fitting methods are, therefore, essential to the progress of (...)
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