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- W3088987050 endingPage "83" @default.
- W3088987050 startingPage "60" @default.
- W3088987050 abstract "How language users become able to process forms they have never encountered in input is central to our understanding of language cognition. A range of models, including rule-based models, stochastic models, and analogy-based models have been proposed to account for this ability. Despite the fact that all three models are reasonably successful, we argue that productivity in language is more insightfully captured through learnability than by rules or probabilities. Using a combination of computational modelling and behavioural experimentation we show that the basic principle of error-driven learning allows language users to detect relevant patterns of any degree of systematicity. In case of allomorphy, these patterns are found at a level that cuts across phonology and morphology and is not considered by mainstream approaches to language. Our findings thus highlight how a learning-based approach applies to phenomena on the continuum from rule-based over probabilistic to “unruly” and constrains our inferences about the types of structures that should be targeted on a cognitively realistic account of allomorphic representation." @default.
- W3088987050 created "2020-10-01" @default.
- W3088987050 creator A5005578132 @default.
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- W3088987050 creator A5026751085 @default.
- W3088987050 creator A5040649996 @default.
- W3088987050 creator A5083955199 @default.
- W3088987050 date "2020-09-24" @default.
- W3088987050 modified "2023-09-26" @default.
- W3088987050 title "What is learned from exposure: an error-driven approach to productivity in language" @default.
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- W3088987050 doi "https://doi.org/10.1080/23273798.2020.1815813" @default.
- W3088987050 hasPublicationYear "2020" @default.