基于dl的文本摘要研究进展

Utkarsh Dixit, Sonam Gupta, A. Yadav, Divakar Yadav
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摘要

在保留重要内容和整体相关性的同时,为一篇冗长的文本创建一个简短而相关的摘要的技术被称为文本摘要。它包括在保留核心信息的同时压缩原文。在当今这个信息超载的时代,由于我们每天都会遇到大量的文本信息,因此文本摘要具有巨大的意义。文本摘要可以由人工手动完成,但也可以使用ML技术自动完成。近年来,深度学习模型在文本摘要方面取得了可喜的成果,已成为自然语言处理领域的一个重要研究方向。本研究提供了关于使用深度学习方法进行文本摘要的文献摘要。该综述涵盖了各种技术,如CNN、RNN、LSTM、DeepSum、GA2C、Pointer Generator和BERT,以及各种数据集,如CNN/Daily Mail和阿拉伯数据集。ROUGE评分用于评估文本总结方法的有效性,BERT获得98%的最高分。本研究给出了文本摘要的DL方法的当前优势的详细检查。并指出了本课题可能的新研究领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent Advances in DL-based Text Summarization: A Systematic Review
The technique of creating a brief and relevant summary of a lengthy piece of text while retaining its vital content and overall relevance is known as text summarization. It involves condensing the original text while retaining its core message. In today's age of information overload, text summarization has gained immense significance as we encounter an excessive amount of textual information on a daily basis. Text summarization can be done manually by humans, but it can also be automated using ML techniques. DL models have demonstrated promising results in text summarization in recent years, and have become a major study area in the field of NLP. This study offers a synopsis of literature on the use of DL approaches for text summarization. The review covers various techniques such as CNN, RNN, LSTM, DeepSum, GA2C, Pointer Generator, and BERT, as well as various datasets such as CNN/Daily Mail and Arabic datasets. The ROUGE Score was used to assess the efficacy of text summarizing approaches, and BERT received the highest score of 98%. This study gives a detail examination of the current advantage in DL approaches for text summarization. Furthermore, it indicates possible new study areas in this subject.
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