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Trends Recognition in Journal Papers by Text Mining

机译:文本挖掘在期刊论文中的趋势识别

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To recognize the trends in journal papers, this paper discusses a text mining method and its application. The method is based on combination of the conventional TF-IDF algorithm for document indexing and RFM analysis in marketing research. While TF (Term Frequency) can be clue for strength of topics and IDF (Inverted Document Frequency) can be clue for bias of topics, recency in RFM analysis can be clue of vicissitude of topics. Applying the proposed method to trend analysis for the quality control journals in the Japanese society, this paper describes how the cross-tabulation of TF, DF and LA (Last Appearance) recognizes the research trends.
机译:为了认识期刊论文的发展趋势,本文讨论了一种文本挖掘方法及其应用。该方法基于传统的TF-IDF算法(用于文档索引)和RFM分析(在市场研究中)相结合。 TF(术语频率)可以作为主题强度的线索,IDF(倒置文档频率)可以作为主题偏差的线索,而RFM分析中的新近度可以作为主题变迁的线索。将所提出的方法应用于日本社会质量控制期刊的趋势分析中,本文描述了TF,DF和LA(Last Appearance)的交叉列表是如何识别研究趋势的。

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