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Main Authors: Ferdous, Md. Tanzim, Chowdhury, Naeem Ahsan, Bhattacharjee, Prithwiraj
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.19317
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author Ferdous, Md. Tanzim
Chowdhury, Naeem Ahsan
Bhattacharjee, Prithwiraj
author_facet Ferdous, Md. Tanzim
Chowdhury, Naeem Ahsan
Bhattacharjee, Prithwiraj
contents This study developed a new Bangla abstractive summarization dataset to generate concise summaries of Bangla articles from diverse sources. Most existing studies in this field have concentrated on news articles, where journalists usually follow a fixed writing style. While such approaches are effective in limited contexts, they often fail to adapt to the varied nature of real-world Bangla texts. In today's digital era, a massive amount of Bangla content is continuously produced across blogs, newspapers, and social media. This creates a pressing need for summarization systems that can reduce information overload and help readers understand content more quickly. To address this challenge, we developed a dataset of over 54,000 Bangla articles and summaries collected from multiple sources, including blogs such as Cinegolpo and newspapers such as Samakal and The Business Standard. Unlike single-domain resources, our dataset spans multiple domains and writing styles. It offers greater adaptability and practical relevance. To establish strong baselines, we trained and evaluated this dataset using several deep learning and transfer learning models, including LSTM, BanglaT5-small, and MTS-small. The results highlight its potential as a benchmark for future research in Bangla natural language processing. This dataset provides a solid foundation for building robust summarization systems and helps expand NLP resources for low-resource languages.
format Preprint
id arxiv_https___arxiv_org_abs_2511_19317
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MultiBanAbs: A Comprehensive Multi-Domain Bangla Abstractive Text Summarization Dataset
Ferdous, Md. Tanzim
Chowdhury, Naeem Ahsan
Bhattacharjee, Prithwiraj
Computation and Language
Artificial Intelligence
This study developed a new Bangla abstractive summarization dataset to generate concise summaries of Bangla articles from diverse sources. Most existing studies in this field have concentrated on news articles, where journalists usually follow a fixed writing style. While such approaches are effective in limited contexts, they often fail to adapt to the varied nature of real-world Bangla texts. In today's digital era, a massive amount of Bangla content is continuously produced across blogs, newspapers, and social media. This creates a pressing need for summarization systems that can reduce information overload and help readers understand content more quickly. To address this challenge, we developed a dataset of over 54,000 Bangla articles and summaries collected from multiple sources, including blogs such as Cinegolpo and newspapers such as Samakal and The Business Standard. Unlike single-domain resources, our dataset spans multiple domains and writing styles. It offers greater adaptability and practical relevance. To establish strong baselines, we trained and evaluated this dataset using several deep learning and transfer learning models, including LSTM, BanglaT5-small, and MTS-small. The results highlight its potential as a benchmark for future research in Bangla natural language processing. This dataset provides a solid foundation for building robust summarization systems and helps expand NLP resources for low-resource languages.
title MultiBanAbs: A Comprehensive Multi-Domain Bangla Abstractive Text Summarization Dataset
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2511.19317