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A Brief Study on Approaches for Extractive Summarization

机译:提取综述方法简要研究

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Moved by the cutting edge mechanical advancements, information is to this century what oil was to the past one. Today, our reality is dropped by the gettogether and spread of gigantic measures of data. With a particularly enormous measure of information flowing in the advanced space, there is a need to create Artificial Intelligence calculations that can naturally abbreviate longer messages and convey exact outlines that can fluidly pass the proposed messages. This paper puts forth a brief survey of five major extractive methods of text summarization- the TFIDF, clustering, neural network, fuzzy logic, and graph-based approaches. A comparison of the five approaches is also presented.
机译:通过尖端机械进步感动,信息是本世纪的油到过去的油。如今,我们的现实被GetTogether掉了下降和巨大的数据衡量措施。通过在高级空间中流动的信息衡量特别庞大的信息,需要创建人工智能计算,其可以自然地缩写更长的消息并传达可以流体通过所提出的消息的精确概述。本文提出了对文本摘要的五种主要提取方法的简要调查 - TFIDF,聚类,神经网络,模糊逻辑和基于图形的方法。还提出了五种方法的比较。

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