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http://dx.doi.org/10.13064/KSSS.2019.11.4.001

Word class information in perception of prosodic prominence by Korean learners of English  

Im, Suyeon (Department of Chinese and Bilingual Studies, The Hong Kong Polytechnic University)
Publication Information
Phonetics and Speech Sciences / v.11, no.4, 2019 , pp. 1-8 More about this Journal
Abstract
This study aims to investigate how prosodic prominence is perceived in relation to word class information (or parts-of-speech) by Korean learners of English compared with native English speakers in public speech. Two groups, Korean learners of English and native English speakers, were asked to judge words perceived as prominent simultaneously while listening to a speech. Parts-of-speech and three acoustic cues (i.e., max F0, mean phone duration, and mean intensity) were analyzed for each word in the speech. The results showed that content words tended to be higher in pitch and longer in duration than function words. Both groups of listeners rated prominence on content words more frequently than on function words. This tendency, however, was significantly greater for Korean learners of English than for native English speakers. Among the parts-of-speech of the content words, Korean learners of English were more likely than native English speakers to judge nouns and verbs as prominent. This study presents evidence that Korean learners of English consider most, if not all, content words as landing locations of prosodic prominence, in alignment with the previous study on the production of prominence.
Keywords
Korean learners of English; parts-of-speech; prosodic prominence; word classes;
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