A Study on Different Multi-Document Summarization Techniques

Shweta V. Mokhale, Gauri M. Dhopawkar
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引用次数: 5

Abstract

In the present situation, the rate of increment of information is growing exponentially in the World Wide Web. As such, bifurcating genuine and noteworthy data from such a colossal size of information has turned into a dull issue. As of late, text summarization is viewed as one of the answers for ousting material data from multiple documents. In recent time, the method which proved to be most accurate for text summarization is Natural Language Processing. Content summary is a method of making an outline by diminishing the range of interesting report and relating basic information of extraordinary record. There is a huge rise in data augmentation on Internet. It increases the need of a highly optimise summary in less time. The system of efficient multi document summary generation can be a best achieving this goal. In this paper a survey on various approaches of summarization presented by the researcher is been discussed and studied.
不同的多文档摘要技术研究
在目前的情况下,万维网上的信息增长速度呈指数级增长。因此,从如此庞大的信息中分离出真实而值得注意的数据已经变成了一个无聊的问题。最近,文本摘要被视为从多个文档中删除重要数据的解决方案之一。近年来,被证明最准确的文本摘要方法是自然语言处理。内容摘要是通过缩小趣闻报道的范围,并将非同寻常的记录的基本信息联系起来,形成一个大纲的方法。互联网上的数据增长速度非常快。它增加了在更短时间内高度优化摘要的需求。高效的多文档摘要生成系统可以很好地实现这一目标。本文对作者提出的各种总结方法进行了讨论和研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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