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Automatic Classification and Analysis of Interdisciplinary Fields in Computer Sciences

机译:计算机科学交叉学科领域的自动分类和分析

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In the last two decades, there have been studies claiming that science is becoming ever more interdisciplinary. However, the evidence has been anecdotal or partial. Here for the first time, we investigate a large size citation network of computer science domain with the intention to develop an automated unsupervised classification model that can efficiently distinguish the core and the interdisciplinary research fields. For this purpose, we propose four indicative features, three of these are directly related to the topological structure of the citation network, while the fourth is an external indicator based on the attractiveness of a field for the in-coming researchers. The significance of each of these features in characterizing interdisciplinary is measured independently and then systematically accumulated to build an unsupervised classification model. The result of the classification model shows two distinctive clusters that clearly distinguish core and interdisciplinary fields of computer science domain. Based on this classification, we further study the evolution dynamics at a microscopic level to show how interdisciplinarity emerges through cross-fertilization of ideas between the fields that otherwise have little overlap as they are mostly studied independently. Finally, to understand the overall impact of interdisciplinary research on the entire domain, we analyze selective citation based measurements of core and interdisciplinary fields, paper submission and acceptance statistics at top-tier conferences and the core-periphery structure of citation network, and observe an increasing impact of the interdisciplinary fields along with their steady integration with the computer science core in recent times.
机译:在过去的二十年中,已有研究声称科学正变得越来越跨学科。但是,证据是轶事或局部的。在这里,我们首次研究了计算机科学领域的大型引文网络,目的是开发一种可以有效地区分核心和跨学科研究领域的自动化无监督分类模型。为此,我们提出了四个指示性特征,其中三个与引文网络的拓扑结构直接相关,而第四个是基于领域对即将到来的研究人员的吸引力的外部指标。这些特征在跨学科表征中的重要性分别进行了测量,然后系统地进行了累积,以建立一个无监督的分类模型。分类模型的结果显示了两个独特的集群,可以清楚地区分计算机科学领域的核心和跨学科领域。基于此分类,我们将在微观水平上进一步研究演化动力学,以显示跨领域的思想如何通过跨领域的思想交叉出现而出现,否则这些领域之间几乎没有重叠,因为它们大多是独立研究的。最后,为了了解跨学科研究对整个领域的整体影响,我们分析了基于选择性引文的核心和跨学科领域的度量,顶级会议上的论文提交和接受统计以及引文网络的核心外围结构,并观察了跨学科领域的影响越来越大,并且与近来与计算机科学核心的稳定融合。

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