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Research Field Discovery Based on Text Clustering

机译:基于文本聚类的研究领域发现

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摘要

For the need of revealing the structure and dynamics of science, text mining technologies have been widely used in extracting technical intelligence from research literature. To analyze the status of research fields, this paper applies text clustering to Chinese national science research proposals. By using vector-space model to represent the proposals, an improved Newman fast clustering algorithm has been carried out to explore the clusters of each year, which indicate the yearly research fields. After that, the paper gives an insightful representation of the whole status of the research fields. Then the similarities of clusters of different years are calculated to discover the groups, which identify the major research fields and illustrate their stability and changes over the time. These analyses will be helpful to discover the development trends of basic research fields.
机译:为了揭示科学的结构和动力学,文本挖掘技术已广泛用于从研究文献中提取技术情报。为了分析研究领域的现状,本文将文本聚类应用于中国国家科研计划。通过使用向量空间模型来表示提议,已经进行了改进的纽曼快速聚类算法来探索每年的聚类,这表明了每年的研究领域。之后,本文对研究领域的整体状况进行了深刻的介绍。然后计算不同年份的群集的相似性以发现这些组,从而确定主要的研究领域并说明其随着时间的变化和稳定性。这些分析将有助于发现基础研究领域的发展趋势。

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