Systemic bias with respect to gender, race and ethnicity, often unconscious, is prevalent in datasets involving choices among individuals. Consequently, society has found it challenging to alleviate bias and achieve diversity in a way that maintains meritocracy in such settings. We propose (a) a novel optimization approach based on optimally flipping outcome labels and training classification models simultaneously to discover changes to be made in the selection process so as to achieve diversity without significantly affecting meritocracy, and (b) a novel implementation tool employing optimal classification trees to provide insights on which attributes of individuals lead to flipping of their labels, and to help make changes in the current selection processes in a manner understandable by human decision makers. We present case studies on three real-world datasets consisting of parole, admissions to the bar and lending decisions, and demonstrate that the price of diversity is low and sometimes negative, that is we can modify our selection processes in a way that enhances diversity without affecting meritocracy significantly, and sometimes improving it.
翻译:性别、种族和族裔方面的系统性偏见往往在涉及个人选择的数据集中普遍存在,这种偏见往往没有意识,因此,社会发现以维持这种环境中的精英主义的方式减少偏见和实现多样性具有挑战性,我们提议:(a) 采用基于最佳翻转结果标签和培训分类模式的新颖优化办法,同时发现在甄选过程中将作出的改变,从而实现多样性,同时不影响精英主义;(b) 采用新颖的执行工具,采用最佳分类树,提供个人属性导致其标签翻转的真知灼见,帮助以人类决策者可以理解的方式改变当前甄选进程。 我们介绍了三个真实世界数据集的案例研究,其中包括假释、加入酒吧和出贷决定,并表明多样性的价格很低,有时是负面的,这就是我们可以改变我们的甄选进程,提高多样性,而不会对精英主义产生重大影响,有时是改进。