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Ontology-based and User-focused Automatic Text Summarization : Using COVID-19 Risk Factors as an Example

2020-11-18 20:15:01
Po-Hsu Allen Chen, Amy Leibrand, Jordan Vasko, Mitch Gauthier

Abstract

This paper proposes a novel Ontology-based and user-focused Automatic Text Summarization (OATS) system, in the setting where the goal is to automatically generate text summarization from unstructured text by extracting sentences containing the information that aligns to the user's focus. OATS consists of two modules: ontology-based topic identification and user-focused text summarization; it first utilizes an ontology-based approach to identify relevant documents to user's interest, and then takes advantage of the answers extracted from a question answering model using questions specified from users for the generation of text summarization. To support the fight against the COVID-19 pandemic, we used COVID-19 risk factors as an example to demonstrate the proposed OATS system with the aim of helping the medical community accurately identify relevant scientific literature and efficiently review the information that addresses risk factors related to COVID-19.

Abstract (translated)

URL

https://arxiv.org/abs/2012.02028

PDF

https://arxiv.org/pdf/2012.02028.pdf


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