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Main Authors: Katwe, Praveenkumar, Balabantaray, RakeshChandra, Vittala, Kaliprasad
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.01543
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author Katwe, Praveenkumar
Balabantaray, RakeshChandra
Vittala, Kaliprasad
author_facet Katwe, Praveenkumar
Balabantaray, RakeshChandra
Vittala, Kaliprasad
contents Current advancements in Natural Language Processing (NLP) have largely favored resource-rich languages, leaving a significant gap in high-quality datasets for low-resource languages like Hindi. This scarcity is particularly evident in text summarization, where the development of robust models is hindered by a lack of diverse, specialized corpora. To address this disparity, this study introduces a cost-effective, automated framework for creating a comprehensive Hindi text summarization dataset. By leveraging the English Extreme Summarization (XSUM) dataset as a source, we employ advanced translation and linguistic adaptation techniques. To ensure high fidelity and contextual relevance, we utilize the Crosslingual Optimized Metric for Evaluation of Translation (COMET) for validation, supplemented by the selective use of Large Language Models (LLMs) for curation. The resulting dataset provides a diverse, multi-thematic resource that mirrors the complexity of the original XSUM corpus. This initiative not only provides a direct tool for Hindi NLP research but also offers a scalable methodology for democratizing NLP in other underserved languages. By reducing the costs associated with dataset creation, this work fosters the development of more nuanced, culturally relevant models in computational linguistics.
format Preprint
id arxiv_https___arxiv_org_abs_2601_01543
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Bridging the Data Gap: Creating a Hindi Text Summarization Dataset from the English XSUM
Katwe, Praveenkumar
Balabantaray, RakeshChandra
Vittala, Kaliprasad
Computation and Language
Artificial Intelligence
Current advancements in Natural Language Processing (NLP) have largely favored resource-rich languages, leaving a significant gap in high-quality datasets for low-resource languages like Hindi. This scarcity is particularly evident in text summarization, where the development of robust models is hindered by a lack of diverse, specialized corpora. To address this disparity, this study introduces a cost-effective, automated framework for creating a comprehensive Hindi text summarization dataset. By leveraging the English Extreme Summarization (XSUM) dataset as a source, we employ advanced translation and linguistic adaptation techniques. To ensure high fidelity and contextual relevance, we utilize the Crosslingual Optimized Metric for Evaluation of Translation (COMET) for validation, supplemented by the selective use of Large Language Models (LLMs) for curation. The resulting dataset provides a diverse, multi-thematic resource that mirrors the complexity of the original XSUM corpus. This initiative not only provides a direct tool for Hindi NLP research but also offers a scalable methodology for democratizing NLP in other underserved languages. By reducing the costs associated with dataset creation, this work fosters the development of more nuanced, culturally relevant models in computational linguistics.
title Bridging the Data Gap: Creating a Hindi Text Summarization Dataset from the English XSUM
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2601.01543