In multiple academic disciplines, having a perceived gender of `woman' is associated with a lower than expected rate of citations. In some fields, that disparity is driven primarily by the citations of men and is increasing over time despite increasing diversification of the profession. It is likely that complex social interactions and individual ideologies shape these disparities. Computational models of select factors that reproduce empirical observations can help us understand some of the minimal driving forces behind these complex phenomena and therefore aid in their mitigation. Here, we present a simple agent-based model of citation practices within academia, in which academics generate citations based on three factors: their estimate of the collaborative network of the field, how they sample that estimate, and how open they are to learning about their field from other academics. We show that increasing homophily -- or the tendency of people to interact with others more like themselves -- in these three domains is sufficient to reproduce observed biases in citation practices. We find that homophily in sampling an estimate of the field influences total citation rates, and openness to learning from new and unfamiliar authors influences the change in those citations over time. We next model a real-world intervention -- the citation diversity statement -- which has the potential to influence both of these parameters. We determine a parameterization of our model that matches the citation practices of academics who use the citation diversity statement. This parameterization paired with an openness to learning from many new authors can result in citation practices that are equitable and stable over time. Ultimately, our work underscores the importance of homophily in shaping citation practices and provides evidence that specific actions may mitigate biased citation practices in academia.
翻译:在多个学术学科中,对`女性'的性别有感知,其引用率低于预期。在有些领域,这种差异主要受男性引证的驱动,尽管职业日益多样化,但随着时间推移,这种差异正在增加。很可能是复杂的社会互动和个人意识形态形成这些差异。复制实证观察的一些要素的计算模型可以帮助我们理解这些复杂现象背后的一些最小驱动因素,从而有助于缓解这些现象。在这里,我们提出了一个简单的学术界引用做法代理模式,其中学术界根据以下三个因素生成引文:他们对实地协作网络的估计,他们如何抽样估计,以及他们对于从其他学者那里了解自己的领域持开放态度。我们表明,在这三个领域,增加同质 -- -- 或人们与更像自己一样的人进行互动的倾向 -- -- 足以帮助我们理解这些复杂现象背后的偏差。我们发现,对实地的估算会影响总的引用率,而从新的和不熟悉的作者学习到这些引文的开放性影响。我们下一个模型是真实世界的干预 -- -- 这种引用多样性做法的推理学的推理学的推理学原理和推理学的推理学结果 -- -- -- -- 其推理学的推理学的推理学的推理学的推理学的推理学的推理学的推理学的推理学的推理学的推理,其推理学的推理学的推理学的推理学的推理,其推理学的推理,其推理,其推理,其推理和推理,其推理学的推理学的推理,其推理学的推理,其推理,其推理,其推理,其推理,其推理和推理,其推理,其推理,其推理,其推理,其推理的推理的推理,其推理的推理的推理和推理和推理,其推理的推理,其推理和推理,其推理和推理,其推理的推理,其推理,其推理的推理的推理的推理,其推理的推理和推理,其推理的推理,其推理的推理的推理,其推理,其推理,其推理,其推理的推理推理