Know-Center GmbH, Graz, 8010, Austria.
Institute of Interactive Systems and Data Science, Graz University of Technology, Graz, 8010, Austria.
Sci Rep. 2023 Jan 31;13(1):1727. doi: 10.1038/s41598-023-28874-9.
The use of data-driven decision support by public agencies is becoming more widespread and already influences the allocation of public resources. This raises ethical concerns, as it has adversely affected minorities and historically discriminated groups. In this paper, we use an approach that combines statistics and data-driven approaches with dynamical modeling to assess long-term fairness effects of labor market interventions. Specifically, we develop and use a model to investigate the impact of decisions caused by a public employment authority that selectively supports job-seekers through targeted help. The selection of who receives what help is based on a data-driven intervention model that estimates an individual's chances of finding a job in a timely manner and rests upon data that describes a population in which skills relevant to the labor market are unevenly distributed between two groups (e.g., males and females). The intervention model has incomplete access to the individual's actual skills and can augment this with knowledge of the individual's group affiliation, thus using a protected attribute to increase predictive accuracy. We assess this intervention model's dynamics-especially fairness-related issues and trade-offs between different fairness goals- over time and compare it to an intervention model that does not use group affiliation as a predictive feature. We conclude that in order to quantify the trade-off correctly and to assess the long-term fairness effects of such a system in the real-world, careful modeling of the surrounding labor market is indispensable.
公共机构越来越多地使用数据驱动的决策支持,这已经影响了公共资源的分配。这引发了伦理问题,因为它对少数群体和历史上受到歧视的群体产生了不利影响。在本文中,我们使用了一种结合统计学和数据驱动方法与动态建模的方法来评估劳动力市场干预的长期公平影响。具体来说,我们开发并使用了一个模型来研究公共就业局的决策对选择性地通过有针对性的帮助支持求职者的影响。谁接受什么样的帮助的选择是基于一个数据驱动的干预模型,该模型估计个人及时找到工作的机会,并基于描述一个技能在两个群体(例如男性和女性)之间分布不均的人群的数据。干预模型无法完全访问个人的实际技能,因此可以通过个人群体归属的知识来增强其预测准确性,从而使用受保护的属性来提高预测准确性。我们评估了这个干预模型的动态性——特别是与公平相关的问题和不同公平目标之间的权衡——随着时间的推移,并将其与不使用群体归属作为预测特征的干预模型进行了比较。我们的结论是,为了正确量化这种权衡,并评估这种系统在现实世界中的长期公平影响,对周围劳动力市场进行仔细的建模是必不可少的。