Incremental Learning of Lexically-Specific Morphophonology: an Integrative Approach

Jarosz, Gaja. to appear. Incremental Learning of Lexically-Specific Morphophonology: an Integrative Approach. To appear in Linguistics Vanguard. Acquisition and processing results indicate idiosyncratic, lexical knowledge interacts with productive, grammatical knowledge in systematic ways. Evidence from language processing demonstrates that higher frequency and less productive complex words are more likely to be retrieved holistically from the […]

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Type and Token Frequency Jointly Drive Learning of Morphology

Jarosz, Gaja, Cerys Hughes, Andrew Lamont, Brandon Prickett, Maggie Baird, Seoyoung Kim & Max Nelson. 2025. Type and token frequency jointly drive learning of morphology. Journal of Memory and Language 144. 104666. https://doi.org/10.1016/j.jml.2025.104666. We examine the joint roles of type frequency and token frequency in three artificial language learning experiments involving lexicalized plural allomorphy. The […]

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The Credit Problem in Parametric Stress: A Statistical Approach

Aleksei Nazarov & Gaja Jarosz. 2021. The Credit Problem in Parametric Stress: A Statistical Approach. Glossa 6(1). 1-26. https://doi.org/10.16995/glossa.5884 In this paper, we introduce a novel domain-general, statistical learning model for P&P grammars: the Expectation Driven Parameter Learner (EDPL). We show that the EDPL provides a mathematically principled solution to the Credit Problem (Dresher 1999). […]

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