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Main Authors: Barman, Sneha Ray, Mahanta, Shakuntala, Sharma, Neeraj Kumar
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2407.06547
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author Barman, Sneha Ray
Mahanta, Shakuntala
Sharma, Neeraj Kumar
author_facet Barman, Sneha Ray
Mahanta, Shakuntala
Sharma, Neeraj Kumar
contents Traditional approaches for understanding phonological learning have predominantly relied on curated text data. Although insightful, such approaches limit the knowledge captured in textual representations of the spoken language. To overcome this limitation, we investigate the potential of the Featural InfoWaveGAN model to learn iterative long-distance vowel harmony using raw speech data. We focus on Assamese, a language known for its phonologically regressive and word-bound vowel harmony. We demonstrate that the model is adept at grasping the intricacies of Assamese phonotactics, particularly iterative long-distance harmony with regressive directionality. It also produced non-iterative illicit forms resembling speech errors during human language acquisition. Our statistical analysis reveals a preference for a specific [+high,+ATR] vowel as a trigger across novel items, indicative of feature learning. More data and control could improve model proficiency, contrasting the universality of learning.
format Preprint
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Deciphering Assamese Vowel Harmony with Featural InfoWaveGAN
Barman, Sneha Ray
Mahanta, Shakuntala
Sharma, Neeraj Kumar
Computation and Language
Traditional approaches for understanding phonological learning have predominantly relied on curated text data. Although insightful, such approaches limit the knowledge captured in textual representations of the spoken language. To overcome this limitation, we investigate the potential of the Featural InfoWaveGAN model to learn iterative long-distance vowel harmony using raw speech data. We focus on Assamese, a language known for its phonologically regressive and word-bound vowel harmony. We demonstrate that the model is adept at grasping the intricacies of Assamese phonotactics, particularly iterative long-distance harmony with regressive directionality. It also produced non-iterative illicit forms resembling speech errors during human language acquisition. Our statistical analysis reveals a preference for a specific [+high,+ATR] vowel as a trigger across novel items, indicative of feature learning. More data and control could improve model proficiency, contrasting the universality of learning.
title Deciphering Assamese Vowel Harmony with Featural InfoWaveGAN
topic Computation and Language
url https://arxiv.org/abs/2407.06547