It has been proposed that the Japanese lexicon can be divided into etymologically defined sublexica on phonotactic and other grounds. However, the psychological reality of this sublexical analysis has been challenged by some authors, who have appealed to putative problems with the learnability of the system. In this study, we apply a commonly used clustering method to Japanese words and show that there is robust statistical evidence for the sublexica and, thereby, that such sublexica are learnable. The model is able to recover phonotactic properties of sublexica previously discussed in the literature, and also reveals hitherto unnoticed phonotactic properties that are characteristic of sublexical membership and can serve as a basis for future experimental investigations. The proposed approach is general and based purely on phonotactic information and thus can be applied to other languages.
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Winter 2022
January 05 2022
Statistical Evidence for Learnable Lexical Subclasses in Japanese
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Takashi Morita,
Takashi Morita
The Institute of Scientific and Industrial Research, Osaka University, [email protected]
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Timothy J. O’Donnell
Timothy J. O’Donnell
Department of Linguistics, McGill University, Québec Artificial Intelligence Institute (Mila), Canada CIFAR AI Chair, Mila, [email protected]
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Takashi Morita
The Institute of Scientific and Industrial Research, Osaka University, [email protected]
Timothy J. O’Donnell
Department of Linguistics, McGill University, Québec Artificial Intelligence Institute (Mila), Canada CIFAR AI Chair, Mila, [email protected]
Online ISSN: 1530-9150
Print ISSN: 0024-3892
© 2020 by the Massachusetts Institute of Technology
2020
Massachusetts Institute of Technology
Linguistic Inquiry (2022) 53 (1): 87–120.
Citation
Takashi Morita, Timothy J. O’Donnell; Statistical Evidence for Learnable Lexical Subclasses in Japanese. Linguistic Inquiry 2022; 53 (1): 87–120. doi: https://doi.org/10.1162/ling_a_00401
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