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A Text Feature Based Automatic Keyword Extraction Method for Single Documents

机译:基于文本特征的单文档关键词自动提取方法

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In this work, we propose a lightweight approach for keyword extraction and ranking based on an unsupervised methodology to select the most important keywords of a single document. To understand the merits of our proposal, we compare it against RAKE, TextRank and SingleRank methods (three well-known unsupervised approaches) and the baseline TF.IDF, over four different collections to illustrate the generality of our approach. The experimental results suggest that extracting keywords from documents using our method results in a superior effectiveness when compared to similar approaches.
机译:在这项工作中,我们提出了一种轻量级的关键字提取和排名方法,该方法基于无监督方法来选择单个文档中最重要的关键字。为了理解我们建议的优点,我们将其与RAKE,TextRank和SingleRank方法(三种众所周知的无监督方法)和基线TF.IDF(在四个不同的集合中)进行了比较,以说明我们方法的一般性。实验结果表明,与类似方法相比,使用我们的方法从文档中提取关键字的效果更好。

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