论文标题
桥接机器学习和机制设计算法公平
Bridging Machine Learning and Mechanism Design towards Algorithmic Fairness
论文作者
论文摘要
因此,决策系统越来越多地策划我们的世界:如何干预算法组件以建立公平,公平的系统是一个最重要的问题;公平和歧视的上下文依赖性本质上,这基本上是复杂的。现代决策系统涉及向人们分配资源或信息(例如,学校选择,广告)将机器学习的预测纳入管道中,引起人们对潜在战略行为或约束分配的担忧,通常在机制设计的背景下解决问题。尽管机器学习和机制设计都开发了解决公平和公平问题的框架,但在某些复杂的决策系统中,这两个框架都不足够。在本文中,我们建立了建立公平的决策系统需要克服这些限制的立场,我们认为,这些限制是每个领域所固有的。我们的最终目标是建立一个包含的框架,该框架凝聚在机理设计和机器学习的各个框架上桥接。我们通过比较每个学科在公正的决策方面的观点,开始为这一目标奠定基础,从而取笑每个领域所教的课程,并可以教对方,并强调需要在这些学科之间进行牢固协作的应用程序域。
Decision-making systems increasingly orchestrate our world: how to intervene on the algorithmic components to build fair and equitable systems is therefore a question of utmost importance; one that is substantially complicated by the context-dependent nature of fairness and discrimination. Modern decision-making systems that involve allocating resources or information to people (e.g., school choice, advertising) incorporate machine-learned predictions in their pipelines, raising concerns about potential strategic behavior or constrained allocation, concerns usually tackled in the context of mechanism design. Although both machine learning and mechanism design have developed frameworks for addressing issues of fairness and equity, in some complex decision-making systems, neither framework is individually sufficient. In this paper, we develop the position that building fair decision-making systems requires overcoming these limitations which, we argue, are inherent to each field. Our ultimate objective is to build an encompassing framework that cohesively bridges the individual frameworks of mechanism design and machine learning. We begin to lay the ground work towards this goal by comparing the perspective each discipline takes on fair decision-making, teasing out the lessons each field has taught and can teach the other, and highlighting application domains that require a strong collaboration between these disciplines.