Sireemas Maspong
2024
Leveraging Deep Learning to Shed Light on Tones of an Endangered Language: A Case Study of Moklen
Sireemas Maspong
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Francesco Burroni
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Teerawee Sukanchanon
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Warunsiri Pornpottanamas
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Pittayawat Pittayaporn
Proceedings of the 3rd Workshop on NLP Applications to Field Linguistics (Field Matters 2024)
Moklen, a tonal Austronesian language spoken in Thailand, exhibits two tones with unbalanced distributions. We employed machine learning techniques for time-series classification to investigate its acoustic properties. Our analysis reveals that a synergy between pitch and vowel quality is crucial for tone distinction, as the model trained with these features achieved the highest accuracy.
2020
A new look at Pattani Malay Initial Geminates: a statistical and machine learning approach
Francesco Burroni
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Sireemas Maspong
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Pittayawat Pittayaporn
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Pimthip Kochaiyaphum
Proceedings of the 34th Pacific Asia Conference on Language, Information and Computation