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Keyphrase Extraction as Topic Identification Using Term Frequency and Synonymous Term Grouping

机译:使用词频和同义词分组的关键词提取作为主题识别

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Keyphrase are usually used as a representative of in the document. This paper presents a method to improve keyphrase extraction by using synonymous term grouping. Topic identification is recognised by term frequency for keyphrase extraction. We utilize a language model including linguistic patterns and language knowledge such as morphology syntax. The language model is a probability of word sequence. The focus unit is a pattern of noun adjective combination The proposed method consist of five processes i.e. preprocessing, candidate selection, semantic-based topic clustering, topic ranking, and keyphrase selection. This experimental result has precision value 54.44 from dataset of IEEE and 39.99 from dataset of SamEval.
机译:关键字短语通常在文档中用作代表。本文提出了一种通过使用同义词分组来改进关键词短语提取的方法。通过关键词短语的词频识别主题标识。我们利用语言模型,包括语言模式和语言知识,例如形态语法。语言模型是单词序列的概率。焦点单元是名词形容词组合的模式。所提出的方法包括五个过程,即预处理,候选者选择,基于语义的主题聚类,主题排名和关键词选择。该实验结果具有来自IEEE数据集的精度值54.44和来自SamEval数据集的精度值39.99。

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