继续支持应用文本挖掘方法进行系统的文献综述

T. Georgieva-Trifonova
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引用次数: 0

摘要

本文提出了一个持续支持系统文献综述(SLR)的框架,其中包括文本挖掘方法的应用,以实现科学出版物的自动分类和更深入的内容分析。为此,从论文的标题、摘要和关键词中创建一个数据集,这些数据集包含在关于语义技术在书目数据库中的应用的系统文献综述中。应用数据分析方法——词频分析和词频组合分析;趋势探索的线性回归;文本分类,其中类别是按照预先定义的分类框架应用的语义技术或研究的问题。利用含有点互信息测度的向量空间模型进行分类。从各种指标对文本分类性能进行了评价,并对所得结果进行了总结。
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Continued Supporting a Systematic Literature Review by Applying Text Mining Methods
In the present paper, a framework for the continued supporting a systematic literature review (SLR) is proposed, which includes the application of text mining methods in order to automate the classification of scientific publications and the more in-depth analysis of their content. For this purpose, a dataset is created from the titles, abstracts and keywords of papers, included in a systematic literature review on the application of semantic technologies in bibliographic databases. Data analytics methods are applied - frequency analysis of words and word combinations; linear regression for trend exploration; text classification, where the categories are the applied semantic technologies or the researched problems in accordance with a pre-defined classification framework. The vector space model enriched with PMI (pointwise mutual information) measure is used for the classification. An assessment of the text classification performance in terms of various measures is made and the obtained results are summarized.
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