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Main Authors: Thu, Ye Kyaw, Oo, Thazin Myint
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.11008
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author Thu, Ye Kyaw
Oo, Thazin Myint
author_facet Thu, Ye Kyaw
Oo, Thazin Myint
contents This paper explores syllable sequence prediction in Abugida languages using Transformer-based models, focusing on six languages: Bengali, Hindi, Khmer, Lao, Myanmar, and Thai, from the Asian Language Treebank (ALT) dataset. We investigate the reconstruction of complete syllable sequences from various incomplete input types, including consonant sequences, vowel sequences, partial syllables (with random character deletions), and masked syllables (with fixed syllable deletions). Our experiments reveal that consonant sequences play a critical role in accurate syllable prediction, achieving high BLEU scores, while vowel sequences present a significantly greater challenge. The model demonstrates robust performance across tasks, particularly in handling partial and masked syllable reconstruction, with strong results for tasks involving consonant information and syllable masking. This study advances the understanding of sequence prediction for Abugida languages and provides practical insights for applications such as text prediction, spelling correction, and data augmentation in these scripts.
format Preprint
id arxiv_https___arxiv_org_abs_2505_11008
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reconstructing Syllable Sequences in Abugida Scripts with Incomplete Inputs
Thu, Ye Kyaw
Oo, Thazin Myint
Computation and Language
Machine Learning
I.2.7
This paper explores syllable sequence prediction in Abugida languages using Transformer-based models, focusing on six languages: Bengali, Hindi, Khmer, Lao, Myanmar, and Thai, from the Asian Language Treebank (ALT) dataset. We investigate the reconstruction of complete syllable sequences from various incomplete input types, including consonant sequences, vowel sequences, partial syllables (with random character deletions), and masked syllables (with fixed syllable deletions). Our experiments reveal that consonant sequences play a critical role in accurate syllable prediction, achieving high BLEU scores, while vowel sequences present a significantly greater challenge. The model demonstrates robust performance across tasks, particularly in handling partial and masked syllable reconstruction, with strong results for tasks involving consonant information and syllable masking. This study advances the understanding of sequence prediction for Abugida languages and provides practical insights for applications such as text prediction, spelling correction, and data augmentation in these scripts.
title Reconstructing Syllable Sequences in Abugida Scripts with Incomplete Inputs
topic Computation and Language
Machine Learning
I.2.7
url https://arxiv.org/abs/2505.11008