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Classification Of Scientific Networks Using Aggregated Journal-journal Citation Relations In The Journal Citation Reports

机译:在期刊引文报告中使用汇总的期刊与期刊引证关系对科学网络进行分类

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摘要

I propose an approach to classifying scientific networks in terms of aggregated journal-journal citation relations of the ISI Journal Citation Reports using the affinity propagation method. This algorithm is applied to obtain the classification of SCI and SSCI journals by minimizing intracategory journal-journal (J-J) distances in the database, where distance between journals is calculated from the similarity of their annual citation patterns with a cutoff parameter, t, to restrain the maximal J-J distance. As demonstrated in the classification of SCI journals, classification of scientific networks with different resolution is possible by choosing proper values of t. Twenty journal categories in SCI are found to be stable despite a difference of an order of magnitude in f. In our classifications, the level of specificity of a category can be found by looking at its value of D_(RJ) (the average distance of members of a category to its representative journal), and relatedness of category members is implied by the value of D_(J-J) (the average J-J distance within a category). Our results are consistent with the ISI classification scheme, and the level of relatedness for most categories in our classification is higher than their counterpart in the ISI classification scheme.
机译:我提出了一种使用亲和力传播方法根据ISI期刊引文报告的期刊与期刊引文关系汇总对科学网络进行分类的方法。通过最小化数据库中的类别内期刊-期刊(JJ)距离,该算法可用于获得SCI和SSCI期刊的分类,其中期刊之间的距离是根据其年度引用模式与截止参数t的相似度来计算的,以限制最大JJ距离。如SCI期刊的分类所示,通过选择适当的t值,可以对具有不同分辨率的科学网络进行分类。尽管在f中有一个数量级的差异,但SCI中的20种期刊类别被发现是稳定的。在我们的分类中,可以通过查看类别的D_(RJ)值(类别成员与其代表期刊的平均距离)来找到类别的特异性级别,而类别成员的相关性则由的值来暗示。 D_(JJ)(类别内的平均JJ距离)。我们的结果与ISI分类方案一致,并且我们分类中大多数类别的相关程度都高于ISI分类方案中的对应程度。

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