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자료유형
학술저널
저자정보
이용훈 (충남대학교)
저널정보
대한언어학회 언어학 언어학 제30권 제1호
발행연도
2022.3
수록면
179 - 201 (23page)

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Lee, Yong-hun. (2022). Lexical effects in island constraints: A deep learning approach. The Linguistic Association of Korea Journal, 30(1), 179-201. This paper examined the lexical effects (a kind of random effect) of each experimental item in English island constraints. For this purpose, this paper adopted (i) the experimental design and dataset in Lee and Park (2018) and (ii) the deep learning model (the BERTLARGE model) in Lee (2021). After the BERTLARGE model was pretrained with the CoLA dataset, the acceptability scores were calculated for all the sentences in the dataset. As in Lee (2021), the acceptability scores in the BERTLARGE model were measured with the numerical values (neither TRUE/FALSE nor Likert scale), which was similar to the magnitude estimation in experimental syntax. After all the acceptability scores were collected, they were normalized into the z-scores and statistically analyzed. In this paper, a mixed-effects model was used where both fixed and random effects could be analyzed, but this paper focused on the random effects which were related to the lexicalization of experimental items. Through the analysis, the following was observed: (i) deep learning models could provide some help to make the experimental designs of syntax more sophisticated and fine-grained, (ii) it was possible to examine and control the lexical effects of experimental items with a deep learning model and a mixed-effects model, and (iii) in the case of island sentences, lexical variability was more crucially affected by the factor Island than Location.

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