Allhutter Doris, Cech Florian, Fischer Fabian, Grill Gabriel, Mager Astrid
Institute of Technology Assessment, Austrian Academy of Sciences, Vienna, Austria.
Centre for Informatics and Society, Faculty for Informatics, Vienna University of Technology (TU Wien), Vienna, Austria.
Front Big Data. 2020 Feb 21;3:5. doi: 10.3389/fdata.2020.00005. eCollection 2020.
As of 2020, the Public Employment Service Austria (AMS) makes use of algorithmic profiling of job seekers to increase the efficiency of its counseling process and the effectiveness of active labor market programs. Based on a statistical model of job seekers' prospects on the labor market, the system-that has become known as the AMS algorithm-is designed to classify clients of the AMS into three categories: those with high chances to find a job within half a year, those with mediocre prospects on the job market, and those clients with a bad outlook of employment in the next 2 years. Depending on the category a particular job seeker is classified under, they will be offered differing support in (re)entering the labor market. Based in science and technology studies, critical data studies and research on fairness, accountability and transparency of algorithmic systems, this paper examines the inherent politics of the AMS algorithm. An in-depth analysis of relevant technical documentation and policy documents investigates crucial conceptual, technical, and social implications of the system. The analysis shows how the design of the algorithm is influenced by technical affordances, but also by social values, norms, and goals. A discussion of the tensions, challenges and possible biases that the system entails calls into question the objectivity and neutrality of data claims and of high hopes pinned on evidence-based decision-making. In this way, the paper sheds light on the coproduction of (semi)automated managerial practices in employment agencies and the framing of unemployment under austerity politics.
截至2020年,奥地利公共就业服务局(AMS)利用对求职者的算法剖析来提高其咨询流程的效率以及积极劳动力市场计划的成效。基于求职者在劳动力市场前景的统计模型,这个被称为AMS算法的系统旨在将AMS的客户分为三类:在半年内有高就业机会的人、在就业市场前景一般的人以及在未来两年就业前景不佳的人。根据特定求职者被划分的类别,他们在重新进入劳动力市场时会得到不同的支持。基于科学技术研究、关键数据研究以及关于算法系统的公平性、问责制和透明度的研究,本文审视了AMS算法内在的政治因素。对相关技术文档和政策文件的深入分析调查了该系统关键的概念、技术和社会影响。分析表明,算法的设计不仅受技术条件的影响,还受社会价值观、规范和目标的影响。对该系统所带来的矛盾、挑战和可能的偏差的讨论,让人质疑数据主张的客观性和中立性以及对基于证据的决策寄予的厚望。通过这种方式,本文揭示了就业机构中(半)自动化管理实践的共同生产以及紧缩政策下对失业的界定。