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Balancing Competing Objectives with Noisy Data: Score-Based Classifiers for Welfare-Aware Machine Learning

机译:使用嘈杂数据进行平衡竞争目标:基于福利感知机器学习的基于分数的分类器

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While real-world decisions involve many competing objectives, algorithmic decisions are often evaluated with a single objective function. In this paper, we study algorithmic policies which explicitly trade off between a private objective (such as profit) and a public objective (such as social welfare). We analyze a natural class of policies which trace an empirical Pareto frontier based on learned scores, and focus on how such decisions can be made in noisy or data-limited regimes. Our theoretical results characterize the optimal strategies in this class, bound the Pareto errors due to inaccuracies in the scores, and show an equivalence between optimal strategies and a rich class of fairness-constrained profit-maximizing policies. We then present empirical results in two different contexts - online content recommendation and sustainable abalone fisheries - to underscore the applicability of our approach to a wide range of practical decisions. Taken together, these results shed light on inherent trade-offs in using machine learning for decisions that impact social welfare.
机译:虽然真实世界的决定涉及许多竞争目标,但通常用单个目标函数评估算法决策。在本文中,我们研究了在私人目标(如利润)和公共目标(如社会福利)之间明确折交的算法政策。我们分析了一种基于学习的分数跟踪经验帕累托边境的自然级政策,并专注于如何在嘈杂或数据限制方面进行这些决定。我们的理论结果表征了本课程中最佳策略,由于分数的不准确性而绑定了帕累托错误,并在最佳策略和丰富的公平受限的利润最大化政策之间表现出对等效的。然后,我们在两种不同的上下文 - 在线内容推荐和可持续鲍鱼渔业中展示了实证结果 - 强调了我们对广泛的实际决策的方法。总之,这些结果阐明了使用机器学习的固有权衡,以影响社会福利的决策。

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