Gender bias, a systemic and unfair difference in how men and women are treated in a given domain, is widely studied across different academic fields. Yet, there are barely any studies of the phenomenon in the field of academic information systems (IS), which is surprising especially in the light of the proliferation of such studies in the Science, Technology, Mathematics and Technology (STEM) disciplines. To assess potential gender bias in the IS field, this paper outlines a study to estimate the impact of scholarly citations that female IS academics accumulate vis-\`a-vis their male colleagues. Drawing on a scientometric study of the 7,260 papers published in the most prestigious IS journals (known as the AIS Basket of Eight), our analysis aims to unveil potential bias in the accumulation of citations between genders in the field. We use panel regression to estimate the gendered citations accumulation in the field. By doing so we propose to contribute knowledge on a core dimension of gender bias in academia, which is, so far, almost completely unexplored in the IS field.
翻译:在不同的学术领域广泛研究学术信息系统(IS)领域几乎没有任何关于这一现象的研究,这特别令人惊讶的是,科学、技术、数学和技术学科中这类研究的大量增加。为了评估IS领域潜在的性别偏见,本文件概述了一项研究,以估计学术上引用女性信息学学者与男性同事之间积累的性别偏见的影响。根据对最有声望的IS杂志(称为AIS八大篮子)发表的7 260篇论文进行的一项科学研究,我们的分析旨在揭示在外地性别之间累积引用中的潜在偏差。我们利用小组回归来估计该领域性别引用积累情况。我们提出在学术界就性别偏见的核心方面贡献知识,迄今为止,在IS领域几乎完全没有探讨。