Survey on Abstractive Text Summarization: Dataset, Models, and Metrics
Nnadi, Gospel Ozioma, Bertini, Flavio
–arXiv.org Artificial Intelligence
Readers and scholars often desire a concise summary (Too Long; Didn't Read - TL;DR) of texts to effectively prioritize information. However, creating document summaries is mentally taxing and time-consuming, especially considering the overwhelming volume of documents produced annually, as depicted in Figure 1 by [2], Figure 2, [3] reported over 100,000 scientific articles on the Corona virus pandemic in 2020, though these articles contain brief abstracts of the article, the sheer volume poses challenges for researchers and medical professionals in quickly extracting relevant knowledge on a specific topic. An automatically generated multi-document summarization could be valuable, providing readers with essential information and reducing the need to access original files unless refinement is necessary. Text summarization has garnered significant research attention, proving useful in search engines, news clustering, timeline generation, and various other applications. The objective of text summarization is to create a brief, coherent, factually consistent, and readable document that retains the essential information from the source document, whether it is a single or multi-document. In Single Document Summarization (SDS) only one input document is used, eliminating the need for additional processing to assess relationships between inputs. This method is suitable for summarizing standalone documents such as emails, legal contracts, financial reports and so on. The primary goal of Multi Document Summarization (MDS) is to gather information from several texts addressing the same topic, often composed at different times or representing diverse perspectives. The overarching objective is to produce information reports that are both succinct and comprehensive, consolidating varied opinions from documents that explore a topic through multiple viewpoints.
arXiv.org Artificial Intelligence
Dec-22-2024
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