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The development of an AI journal ranking based on the revealed preference approach

机译:基于揭示的偏好方法开发AI期刊排名

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This study presents a ranking of 182 academic journals in the field of artificial intelligence. For this, the revealed preference approach, also referred to as a citation impact method, was utilized to collect data from Google Scholar. This list was developed based on three relatively novel indices: h-index, g-index, and he-index. These indices correlated almost perfectly with one another (ranging from 0.97 to 0.99), and they correlated strongly with Thomson's Journal Impact Factors (ranging from 0.64 to 0.69). It was concluded that journal longevity (years in print) is an important but not the only factor affecting an outlet's ranking position. Inclusion in Thomson's Journal Citation Reports is a must for a journal to be identified as a leading A+ or A level outlet. However, coverage by Thomson does not guarantee a high citation impact of an outlet. The presented list may be utilized by scholars who want to demonstrate their research output, various academic committees, librarians and administrators who are not familiar with the AI research domain.
机译:这项研究提出了人工智能领域182种学术期刊的排名。为此,利用了揭示的偏好方法(也称为引文影响方法)从Google学术搜索收集数据。该列表是根据三个相对新颖的索引制定的:h指数,g指数和he指数。这些指数之间几乎完全相关(范围从0.97到0.99),并且与汤姆森的期刊影响因子(范围从0.64到0.69)密切相关。结论是,期刊寿命(印刷年限)是影响网点排名的重要但不是唯一的因素。必须将期刊包含在Thomson的期刊引文报告中,才能将其识别为领先的A +或A级出口。但是,汤姆森的报道并不能保证网点的高引文影响。想要展示其研究成果的学者,不熟悉AI研究领域的各种学术委员会,图书馆员和管理人员都可以使用该列表。

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