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Not Yet as Native as Native Speakers: Comparing Deep Learning Predictions and Human JudgmentsNot Yet as Native as Native Speakers: Comparing Deep Learning Predictions and Human Judgments

Other Titles
Not Yet as Native as Native Speakers: Comparing Deep Learning Predictions and Human Judgments
Authors
박권식유석훈송상헌
Issue Date
2020
Publisher
한국영어학학회
Keywords
deep learning; nativeness judgment; language experiment; well-formedness; plausibility
Citation
영어학연구, v.26, no.1, pp.199 - 228
Indexed
KCI
Journal Title
영어학연구
Volume
26
Number
1
Start Page
199
End Page
228
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/60248
DOI
10.17960/ell.2020.26.1.010
ISSN
1598-9453
Abstract
The purpose of this paper is to examine feasibility of replacing humans with deep learning in nativeness judgments and figure out in which way to develop the model in order to reach the level of humans by comparing nativeness judgments by deep learning and humans on English data. The controlled items, composed of 210 sentences, are categorized into two types: well-formedness test (i.e., no syntactic violation) and plausibility (i.e., no awkwardness) test items, most of which are excerpted from precedent linguistics literature. The deep learning model and five English native speakers are asked to classify the nativeness of the same stimulus sentences and the results reveal differences and similarities between them; although the overall performance of humans overwhelms that of deep learning, they are quite similar in judging plausibility items and learner data. The length of response time―hanging back from decision of nativeness―does not guarantee the accuracy, which means judging nativeness depends on something like intuition rather than deliberation.
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