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Semantic properties of English nominal pluralization: Insights from word embeddings ...
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Bilingual and multilingual mental lexicon: a modeling study with Linear Discriminative Learning
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The processing of pseudoword form and meaning in production and comprehension: A computational modeling approach using linear discriminative learning.
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In: Behavior research methods, vol 53, iss 3 (2021)
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Modeling morphology with Linear Discriminative Learning: considerations and design choices ...
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Learning Zero-Shot Multifaceted Visually Grounded Word Embeddings via Multi-Task Training ...
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Relative functional load determines co-articulatory movements of the tongue tip ...
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Relative functional load determines co-articulatory movements of the tongue tip ...
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Vector Space Morphology with Linear Discriminative Learning ...
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Abstract:
This paper presents three case studies of modeling aspects of lexical processing with Linear Discriminative Learning (LDL), the computational engine of the Discriminative Lexicon model (Baayen et al., 2019). With numeric representations of word forms and meanings, LDL learns to map one vector space onto the other, without being informed about any morphological structure or inflectional classes. The modeling results demonstrated that LDL not only performs well for understanding and producing morphologically complex words, but also generates quantitative measures that are predictive for human behavioral data. LDL models are straightforward to implement with the JudiLing package (Luo et al., 2021). Worked examples are provided for three modeling challenges: producing and understanding Korean verb inflection, predicting primed Dutch lexical decision latencies, and predicting the acoustic duration of Mandarin words. ...
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Keyword:
Computation and Language cs.CL; FOS Computer and information sciences
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URL: https://arxiv.org/abs/2107.03950 https://dx.doi.org/10.48550/arxiv.2107.03950
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A note on the modeling of the effects of experimental time in psycholinguistic experiments ...
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Modeling Morphology With Linear Discriminative Learning: Considerations and Design Choices
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In: Front Psychol (2021)
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Learning Zero-Shot Multifaceted Visually Grounded Word Embeddings via Multi-Task Training
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Deconfounding the effects of competition and attrition on dialect across the lifespan : a panel study investigation of Swabian
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Bilingual and Multilingual Mental Lexicon: A Modeling Study With Linear Discriminative Learning
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Analyzing phonetic data with generalized additive mixed models
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Phonetic effects of morphology and context : modeling the duration of word-final S in English with naïve discriminative learning
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Variation Within Idiomatic Variation: Exploring the Differences Between Speakers and Idioms
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Modeling Morphological Priming in German With Naive Discriminative Learning
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In: Frontiers in Communication ; 5 (2020). - 17. - Frontiers Media. - eISSN 2297-900X (2020)
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