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Main Authors: Biswas, Sajib, Biswas, Milon, Mandal, Arunima, Liza, Fatema Tabassum, Sarker, Joy
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.15614
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author Biswas, Sajib
Biswas, Milon
Mandal, Arunima
Liza, Fatema Tabassum
Sarker, Joy
author_facet Biswas, Sajib
Biswas, Milon
Mandal, Arunima
Liza, Fatema Tabassum
Sarker, Joy
contents In the age of information overload, content management for online news articles relies on efficient summarization to enhance accessibility and user engagement. This article addresses the challenge of extractive text summarization by employing advanced machine learning techniques to generate concise and coherent summaries while preserving the original meaning. Using the Cornell Newsroom dataset, comprising 1.3 million article-summary pairs, we developed a pipeline leveraging BERT embeddings to transform textual data into numerical representations. By framing the task as a binary classification problem, we explored various models, including logistic regression, feed-forward neural networks, and long short-term memory (LSTM) networks. Our findings demonstrate that LSTM networks, with their ability to capture sequential dependencies, outperform baseline methods like Lede-3 and simpler models in F1 score and ROUGE-1 metrics. This study underscores the potential of automated summarization in improving content management systems for online news platforms, enabling more efficient content organization and enhanced user experiences.
format Preprint
id arxiv_https___arxiv_org_abs_2509_15614
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Efficient Extractive Text Summarization for Online News Articles Using Machine Learning
Biswas, Sajib
Biswas, Milon
Mandal, Arunima
Liza, Fatema Tabassum
Sarker, Joy
Machine Learning
In the age of information overload, content management for online news articles relies on efficient summarization to enhance accessibility and user engagement. This article addresses the challenge of extractive text summarization by employing advanced machine learning techniques to generate concise and coherent summaries while preserving the original meaning. Using the Cornell Newsroom dataset, comprising 1.3 million article-summary pairs, we developed a pipeline leveraging BERT embeddings to transform textual data into numerical representations. By framing the task as a binary classification problem, we explored various models, including logistic regression, feed-forward neural networks, and long short-term memory (LSTM) networks. Our findings demonstrate that LSTM networks, with their ability to capture sequential dependencies, outperform baseline methods like Lede-3 and simpler models in F1 score and ROUGE-1 metrics. This study underscores the potential of automated summarization in improving content management systems for online news platforms, enabling more efficient content organization and enhanced user experiences.
title Efficient Extractive Text Summarization for Online News Articles Using Machine Learning
topic Machine Learning
url https://arxiv.org/abs/2509.15614