学习增强机制设计:利用设施位置预测

Priyank Agrawal, Eric Balkanski, Vasilis Gkatzelis, Ting-Chieh Ou, Xizhi Tan
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引用次数: 10

摘要

在这项工作中,我们引入了一种替代模型,用于设计和分析策略验证机制,该模型是由最近在“学习增强算法”方面激增的工作所激发的。为了补充计算机科学中基于最坏情况分析算法性能的传统方法,这条线的工作重点是设计和分析算法,这些算法通过机器学习预测来增强最优解。算法可以使用预测作为指导来通知他们的决策,目标是在这些预测准确(一致性)时实现更强的性能保证,同时保持接近最优的最坏情况保证,即使这些预测非常不准确(鲁棒性)。到目前为止,这些结果仅限于算法,但在这项工作中,我们认为该框架的另一个沃土是机制设计。我们开始设计和分析策略验证机制,并对参与代理的私有信息进行预测。为了展示这种方法的重要好处,我们重新审视了二维欧几里得空间中具有战略代理的设施定位的典型问题。我们研究了平等主义和功利主义的社会成本函数,并提出了新的策略证明机制,利用预测来保证一致性和鲁棒性保证之间的最佳权衡。这为设计人员提供了一个机制选项菜单,可以根据她对预测准确性的信心进行选择。此外,我们还证明了参数化近似结果作为预测误差的函数,表明即使在预测不完全准确的情况下,我们的机制也表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-Augmented Mechanism Design: Leveraging Predictions for Facility Location
In this work we introduce an alternative model for the design and analysis of strategyproof mechanisms that is motivated by the recent surge of work in "learning-augmented algorithms". Aiming to complement the traditional approach in computer science, which analyzes the performance of algorithms based on worst-case instances, this line of work has focused on the design and analysis of algorithms that are enhanced with machine-learned predictions regarding the optimal solution. The algorithms can use the predictions as a guide to inform their decisions, and the goal is to achieve much stronger performance guarantees when these predictions are accurate (consistency), while also maintaining near-optimal worst-case guarantees, even if these predictions are very inaccurate (robustness). So far, these results have been limited to algorithms, but in this work we argue that another fertile ground for this framework is in mechanism design. We initiate the design and analysis of strategyproof mechanisms that are augmented with predictions regarding the private information of the participating agents. To exhibit the important benefits of this approach, we revisit the canonical problem of facility location with strategic agents in the two-dimensional Euclidean space. We study both the egalitarian and utilitarian social cost functions, and we propose new strategyproof mechanisms that leverage predictions to guarantee an optimal trade-off between consistency and robustness guarantees. This provides the designer with a menu of mechanism options to choose from, depending on her confidence regarding the prediction accuracy. Furthermore, we also prove parameterized approximation results as a function of the prediction error, showing that our mechanisms perform well even when the predictions are not fully accurate.
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