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Learning nuanced cross-disciplinary citation metric normalization using the hierarchical Dirichlet process on big scholarly data

机译:使用分级Dirichlet过程在大的学术数据上学习细​​微的跨学科引用度量规范化

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摘要

Citation counts have long been used in academia as a way of measuring, inter alia, the importance of journals, quantifying the significance and the impact of a researcher's body of work, and allocating funding for individuals and departments. For example, the h-index proposed by Hirsch is one of the most popular metrics that utilizes citation analysis to determine an individual's research impact. Among many issues, one of the pitfalls of citation metrics is the unfairness which emerges when comparisons are made between researchers in different fields. The algorithm we described in the present paper learns evidence based, nuanced, and probabilistic representations of academic fields, and uses data collected by crawling Google Scholar to perform field of study based normalization of citation based impact metrics such as the h-index.
机译:长期以来,学术界一直使用引文计数来衡量期刊的重要性,量化研究人员的工作体系的重要性和影响以及为个人和部门分配资金。例如,赫希(Hirsch)提出的h指数是最受欢迎的指标之一,它利用引文分析来确定个人的研究影响。在许多问题中,引文指标的陷阱之一是不公平,这种不公平是在不同领域的研究人员之间进行比较时出现的。我们在本文中描述的算法学习了学术领域的基于证据的,细微的和概率的表示,并使用通过爬网Google学术搜索收集的数据来执行基于研究的基于引文的影响指标(如h指数)的归一化。

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