Skewed citation distributions and bias factors: Solutions to two core problems with the journal impact factor

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The journal impact factor (JIF) proposed by Garfield in the year 1955 is one of the most prominent and common measures of the prestige, position, and importance of a scientific journal. The JIF may profit from its comprehensibility, robustness, methodological reproducibility, simplicity, and rapid availability, but it is at the expense of serious technical and methodological flaws. The paper discusses two core problems with the JIF: first, citations of documents are generally not normally distributed, and, furthermore, the distribution is affected by outliers, which has serious consequences for the use of the mean value in the JIF calculation. Second, the JIF is affected by bias factors that have nothing to do with the prestige or quality of a journal (e.g., document type). For solving these two problems, we suggest using McCall's area transformation and the Rubin Causal Model. Citation data for documents of all journals in the ISI Subject Category “Psychology, Mathematical” (Journal Citation Report) are used to illustrate the proposal.

论文关键词:Journal impact factor,Normalization,McCall's area transformation,Rubin Causal Model

论文评审过程:Received 26 August 2011, Revised 20 December 2011, Accepted 21 December 2011, Available online 16 February 2012.

论文官网地址:https://doi.org/10.1016/j.joi.2011.12.006