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Use of L1 Categories in the Identification of English Posterior ObstruentsUse of L1 Categories in the Identification of English Posterior Obstruents

Other Titles
Use of L1 Categories in the Identification of English Posterior Obstruents
Authors
초미희이신숙
Issue Date
2016
Publisher
한국영어학학회
Keywords
quantitative mapping model; English posterior obstruents; identification accuracy; error rates; L1 category use
Citation
영어학연구, v.22, no.2, pp.59 - 80
Indexed
KCI
Journal Title
영어학연구
Volume
22
Number
2
Start Page
59
End Page
80
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/91324
DOI
10.17960/ell.2016.22.2.004
ISSN
1598-9453
Abstract
The quantitative mapping model proposed by Park and de Jong (2008) predicted the identification of L2 English stops very well, especially when the L2 speakers’ goodness-of-fit was included. The current paper purports to provide a testing ground for the quantitative model by examining the model’s prediction for the identification of English posterior obstruents. To that end, 42 Korean speakers performed English-to-Korean mapping and English identification. Results showed that Korean speakers’ identification accuracy of English posterior obstruents was successfully predicted by the quantitative model except English voiced fricative /ʒ/. The prediction of accuracy was slightly improved when the speakers’ goodness ratings were included into the model. Also, error rates were well predicted except English /ʒ/ and /ʤ/. Further, Korean speakers were found to have much confusion between English /ʒ/ and /ʤ/, possibly due to the speakers’ having not developed firm sound categories for these sounds. Based on the results of the study, some implications for the mapping model and the Speech Learning Model were discussed.
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