What You See Is What You Get? The Impact of Representation Criteria on Human Bias in Hiring

Andi Peng, Besmira Nushi, Emre Kıcıman, K. Quinn, Siddharth Suri, Ece Kamar
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引用次数: 34

Abstract

Although systematic biases in decision-making are widely documented, the ways in which they emerge from different sources is less understood. We present a controlled experimental platform to study gender bias in hiring by decoupling the effect of world distribution (the gender breakdown of candidates in a specific profession) from bias in human decision-making. We explore the effectiveness of representation criteria, fixed proportional display of candidates, as an intervention strategy for mitigation of gender bias by conducting experiments measuring human decision-makers’ rankings for who they would recommend as potential hires. Experiments across professions with varying gender proportions show that balancing gender representation in candidate slates can correct biases for some professions where the world distribution is skewed, although doing so has no impact on other professions where human persistent preferences are at play. We show that the gender of the decision-maker, complexity of the decision-making task and over- and under-representation of genders in the candidate slate can all impact the final decision. By decoupling sources of bias, we can better isolate strategies for bias mitigation in human-in-the-loop systems.
所见即所得?代表性标准对招聘中人类偏见的影响
尽管决策过程中的系统性偏见被广泛记录在案,但人们对它们从不同来源产生的方式却知之甚少。我们提出了一个受控实验平台,通过将世界分布(特定职业候选人的性别细分)的影响与人类决策中的偏见脱钩,来研究招聘中的性别偏见。我们通过实验测量人类决策者对他们推荐的潜在雇员的排名,来探索代表性标准的有效性,即候选人的固定比例展示,作为一种缓解性别偏见的干预策略。在不同性别比例的职业中进行的实验表明,平衡候选人名单中的性别代表可以纠正一些世界分布不平衡的职业的偏见,尽管这样做对人类持久偏好起作用的其他职业没有影响。我们的研究表明,决策者的性别、决策任务的复杂性以及候选人中性别比例的高低都会影响最终的决策。通过解耦偏差源,我们可以更好地隔离在人在环系统中减轻偏差的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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