基于图神经网络的文本摘要技术比较研究

IF 0.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Web Intelligence Pub Date : 2023-06-22 DOI:10.3233/web-230014
Samina Mulla, N. Shaikh
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引用次数: 0

摘要

由于通过电子邮件、社交媒体和新闻文章在线提供的大量文本内容,从多个文档中总结文本信息变得非常复杂。文本摘要自动创建文档的全面描述,通过关键字保留其信息内容,其中多文档摘要(Multi-Document summarization, MDS)是一种用于数据积累的高效工具,它从文档中创建简洁且信息丰富的摘要。为了从文档中提取相关信息,图神经网络(gnn)是一种通过在图节点之间推进消息来保存图的相互关系的神经结构。近年来,图注意网络(GAN)、图循环网络(recurrent network)、图卷积网络(GCN)等gnn的高级版本利用深度学习技术的优势,在文本摘要方面表现优异。因此,在本调查中,分析和讨论了用于文本摘要的图形方法,其中强调了最近基于深度学习技术的文本摘要模型。在此基础上,提出了神经网络设计模式抽象的分类方法,并对现有的文本摘要模型进行了综合。最后,综述文章提出了研究者未来的研究方向,这将激发文本摘要的热情和新颖的贡献。
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Over comparative study of text summarization techniques based on graph neural networks
Due to the enormous content of text available online through emails, social media, and news articles, it has become complicated to summarize the textual information from multiple documents. Text summarization automatically creates a comprehensive description of the document that retains its informative contents through the keywords, where Multi-Document Summarization (MDS) is a productive tool for data accumulation that creates a concise and informative summary from the documents. In order to extract the relevant information from the documents, Graph neural networks (GNNs) is the neural structure that detains the interrelation of the graph by progressing the messages between the graphical nodes. In the current years, the advanced version of GNNs, such as graph attention network (GAN), graph recurrent network, and graph convolutional network (GCN) provides a remarkable performance in text summarization with the advantage of deep learning techniques. Hence, in this survey, graph approaches for text summarization has been analyzed and discussed, where the recent text summarization model based on Deep learning techniques are highlighted. Further, the article provides the taxonomy to abstract the design pattern of Neural Networks and conducts a comprehensive of the existing text summarization model. Finally, the review article enlists the future direction of the researcher, which would motivate the enthusiastic and novel contributions in text summarizations.
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来源期刊
Web Intelligence
Web Intelligence COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
0.90
自引率
0.00%
发文量
35
期刊介绍: Web Intelligence (WI) is an official journal of the Web Intelligence Consortium (WIC), an international organization dedicated to promoting collaborative scientific research and industrial development in the era of Web intelligence. WI seeks to collaborate with major societies and international conferences in the field. WI is a peer-reviewed journal, which publishes four issues a year, in both online and print form. WI aims to achieve a multi-disciplinary balance between research advances in theories and methods usually associated with Collective Intelligence, Data Science, Human-Centric Computing, Knowledge Management, and Network Science. It is committed to publishing research that both deepen the understanding of computational, logical, cognitive, physical, and social foundations of the future Web, and enable the development and application of technologies based on Web intelligence. The journal features high-quality, original research papers (including state-of-the-art reviews), brief papers, and letters in all theoretical and technology areas that make up the field of WI. The papers should clearly focus on some of the following areas of interest: a. Collective Intelligence[...] b. Data Science[...] c. Human-Centric Computing[...] d. Knowledge Management[...] e. Network Science[...]
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