Rankings of people and items are at the heart of selection-making, match-making, and recommender systems, ranging from employment sites to sharing economy platforms. As ranking positions influence the amount of attention the ranked subjects receive, biases in rankings can lead to unfair distribution of opportunities and resources, such as jobs or income. This paper proposes new measures and mechanisms to quantify and mitigate unfairness from a bias inherent to all rankings, namely, the position bias, which leads to disproportionately less attention being paid to low-ranked subjects. Our approach differs from recent fair ranking approaches in two important ways. First, existing works measure unfairness at the level of subject groups while our measures capture unfairness at the level of individual subjects, and as such subsume group unfairness. Second, as no single ranking can achieve individual attention fairness, we propose a novel mechanism that achieves amortized fairness, where attention accumulated across a series of rankings is proportional to accumulated relevance. We formulate the challenge of achieving amortized individual fairness subject to constraints on ranking quality as an online optimization problem and show that it can be solved as an integer linear program. Our experimental evaluation reveals that unfair attention distribution in rankings can be substantial, and demonstrates that our method can improve individual fairness while retaining high ranking quality.
翻译:人和项目的排名是甄选、匹配和建议制度的核心,从就业地点到共享经济平台,从就业地点到共享经济平台,都是选择、匹配和推荐制度的核心。随着排名职位影响排名主体获得的注意程度,排名中的偏见可能导致机会和资源分配不公,如工作或收入。本文件提出新的措施和机制,以量化和减少来自所有排名所固有的偏见的不公平,即职位偏差,导致对低排名主体的注意力不成比例地减少。我们的方法与最近的公平排名方法有两大不同。首先,现有工作衡量主题群体层面的不公平,而我们的措施则衡量单个主体层面的不公平,以及作为子类的不公平。第二,由于单一排名不能实现个人关注的公平性,因此我们提出了一个新的机制,即实现分级公平性,在一系列排名中累积的注意力与累积的相关性成正比。我们提出了实现分级的个人公平性的挑战,但以在线优化问题为限制,并表明它可以作为直线方案加以解决。我们的实验性评价显示,在个人排名中,个人偏差的排名可以显示,提高个人关注程度,同时保持个人排名的高分。