Abstract
Within usage-based theory, notably in construction grammar though also elsewhere, the role of the lexicon and of lexically-specific patterns in morphosyntax is well recognized. The methodology, however, is not always sufficiently suited to get at the details, as lexical effects are difficult to study under what are currently the standard methods for investigating grammar empirically. In this short article, we propose a method from machine learning: regularized regression (Lasso) with k-fold cross-validation, and compare its performance with a Distinctive Collexeme Analysis.
Reference50 articles.
1. Bloem, Jelke (2021). Processing verb clusters. Utrecht: LOT Dissertation Series.
2. Bondell, Howard D., Arun Krishna, and Sujit K. Ghosh (2010). Joint variable selection for fixed and random effects in linear mixed-effects models. Biometrics 66(4): 1069–1077. https://doi.org/10.1111/j.1541-0420.2010.01391.x
3. Bresnan, Joan, Anna Cueni, Tatiana, and R. Harald Baayen (2007). Predicting the dative alternation. In Gerlof Bouma, Irene Kraemer, and Joost Zwarts (Eds), Cognitive Foundations of Interpretation. Amsterdam: Royal Netherlands Academy of Science. 69–94.
4. Bresnan, Joan and Ford, Marilyn. (2010). Predicting syntax: Processing dative constructions in American and Australian varieties of English. Language 86: 168–213. https://doi.org/10.1353/lan.0.0189
5. Cappelle, Bert (2006). Particle placement and the case for ‘allostructions’. In Doris Schönefeld (Ed.), Constructions all Over: Case Studies and Theoretical Implications. [Special issue of Constructions].
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