阿拉伯语文本摘要中的深度学习:方法,数据集和评估指标

Yasmin Einieh, Amal Almansour
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引用次数: 0

摘要

最近,互联网上有大量的数据。因此,用户很难通过所有可用的在线信息手动生成精确的摘要。自动文本摘要(Automatic Text Summarization, ATS)系统为这个问题提供了解决方案,因为它们在保留最重要信息的同时,生成了更短、更易于管理的输入文本版本。深度学习在自然语言处理(NLP)任务中取得了良好的效果,在英语语言中,深度学习技术特别是在自动文本摘要(ATS)中的应用越来越多。然而,在阿拉伯语中评估这些技术的研究仍然不足。在这项研究工作中,我们回顾了几篇关于阿拉伯语深度学习使用的文章。具体来说,我们研究了抽取和抽象阿拉伯语文本摘要的可用模型、数据集和评估指标。我们回顾了12篇研究论文,发现大多数研究使用深度学习进行抽象摘要类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning in Arabic Text Summarization: Approaches, Datasets, and Evaluation Metrics
Recently, there is a massive amount of data available on the internet. Hence, it is quite difficult for the users to go through all the available online information to generate a precise summary manually. Automatic Text Summarization (ATS) systems provide a solution to this problem as they produce a shorter and manageable version of the input text while keeping the most important information. Deep learning has achieved good results in Natural Language Processing (NLP) tasks and the use of deep learning techniques specifically in Automatic Text Summarization (ATS) has increased in English language. However, there is still a shortage of studies evaluating these techniques in Arabic language. In this research work, we review several articles that address the usage of deep learning with Arabic language. Specifically, we study the available models, datasets, and evaluation metrics for extractive and abstractive Arabic text summarization. We reviewed 12 research papers and found that most of the studies employed deep learning for the abstractive summarization type.
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