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Discovering Research Key Terms as Temporal Patterns of Importance Indices for Text Mining

机译:发现研究重点作为文本挖掘的重要性索引的时间模式

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For researchers, it is important to continue discovering and understanding key topics on their own fields. However, the analysis is almost depended on their experiences. In order to support for discovering emergent key topics as key terms in given textual datasets, we propose a method based on temporal patterns in several data-driven indices for text mining. The method consists of an automatic term extraction method in given documents, three importance indices, and temporal patterns based on results of clustering and linear trends of their centroids. Empirical studies show that the three importance indices are applied to the titles of two academic conferences about artificial intelligence field as sets of documents. After extracting the temporal patterns of automatically extracted terms, we compared the trends of the technical terms among the titles of the conferences.
机译:对于研究人员来说,重要的是继续在自己的领域发现和理解关键主题。但是,分析几乎取决于他们的经历。为了支持在给定的文本数据集中作为关键术语发现紧急关键主题,我们提出了一种基于用于文本挖掘的多个数据驱动索引中的时间模式的方法。该方法包括在给定文档,三个重要指标和基于其质心的聚类和线性趋势的结果的三个重要指标和时间模式的自动术语提取方法。实证研究表明,这三个重要指标适用于两种学术会议的标题,了解了人工智能领域的文件。在提取自动提取条款的时间模式后,我们将技术术语的趋势与会议的标题进行了比较。

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