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Subject

Pattern recognition modeling of American English vowel identification by four different identification-proficiency levels of Korean listeners
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논문 기본 정보

Type
Academic journal
Author
Soonhyun Hong (Inha University)
Journal
The Phonology-Morphology Circle of Korea Studies in Phonetics, Phonology and Morphology Vol.22 No.1 KCI Accredited Journals
Published
2016.4
Pages
147 - 175 (29page)

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Pattern recognition modeling of American English vowel identification by four different identification-proficiency levels of Korean listeners
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Abstract· Keywords

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It has been recently reported through pattern recognition or synthesized vowel perception studies that American English listeners categorize vowels using dynamic spectral properties and duration rather than static spectral properties only (Hillenbrand et al. 1995, Hillenbrand 2013). However, Hong (2015) showed through pattern recognition modeling that Korean listeners used static spectral properties and duration when identifying English vowels. The present study extended Hong (2015) and built a logistic regression classification model to investigate which acoustic cues (static or dynamic spectral features, duration or F0) four different identification-proficiency levels of 133 Korean listeners may use to identify American English monophthongs in /hVd/ syllables. It turned out that the two upper-level groups of Korean listeners used dynamic spectral properties and duration just like American English listeners, whereas the other two lower-level groups used static spectral properties and duration.

Contents

1. Introduction
2. Previous studies
3. Experiment
4. Results
5. Discussion
6. Summary and Conclusion
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UCI(KEPA) : I410-ECN-0101-2016-711-002843893