自动摘要技术综述

Sicui Wang, Weijiang Li, Feng Wang, H. Deng
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引用次数: 17

摘要

随着互联网的日益普及和信息获取技术的多样化,快速增长的信息量已经超出了我们的想象。为了帮助用户快速、准确地从海量数据中找到想要的信息,提出了许多技术,其中自动摘要是一种有效的方法。本文经过仔细研究,将现有的自动摘要技术分为五类:自动提取、基于理解的自动摘要、信息提取、基于话语的自动摘要和基于用户查询的自动摘要。概述了自动摘要的发展历史。对这五种分类方法的原理分别进行了详细的阐述。最后对这五种分类方法进行了比较,并对今后的工作进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on Automatic Summarization
With the increasing popularity of Internet and the diversity of information obtaining technologies, the amount of quickly growing information has gone beyond our imaginations. Many techniques were presented to help users to find the desired information from large data set quickly and accurately, automatic summarization is an effective approach. In this paper, after careful investigation, existing automatic summarization techniques are classified as five categories: automatic extraction, understanding-based automatic summarization, information extraction, automatic summarization based on discourse and automatic summarization based on user-query. The history of automatic summarization is outlined. The principles of the five categories methods are respectively described in detail. In the end, the five categories methods are compared and the future work is discussed.
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