Randomized Strategic Facility Location with Predictions

Eric Balkanski, Vasilis Gkatzelis, Golnoosh Shahkarami
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Abstract

We revisit the canonical problem of strategic facility location and study the power and limitations of randomization in the design of truthful mechanisms augmented with machine-learned predictions. In the strategic facility location problem, a set of agents are asked to report their locations in some metric space and the goal is to use these reported locations to determine where to open a new facility, aiming to optimize some aggregate measure of distance of the agents from that facility. However, the agents are strategic and can misreport their locations if this may lead to a facility location choice that they prefer. The goal is to design truthful mechanisms, which ensure the agents cannot benefit by misreporting. A lot of prior work has studied this problem from a worst-case perspective, but a recent line of work proposed a framework to refine these results when the designer is provided with some, possible incorrect, predictions regarding the agents' true locations. The goal is to simultaneously provide strong consistency guarantees (i.e., guarantees when the predictions provided to the mechanism are correct) and near-optimal robustness guarantees (i.e., guarantees that hold irrespective of how inaccurate the predictions may be). In this work we focus on the power of randomization in this problem and analyze the best approximation guarantees achievable with respect to the egalitarian social cost measure for one- and two-dimensional Euclidean spaces.
带有预测的随机战略设施选址
我们重新审视了战略设施选址这一典型问题,并研究了在设计由机器学习预测支持的真实机制时随机化的能力和局限性。在战略设施定位问题中,一组代理被要求报告他们在某个度量空间中的位置,目标是利用这些报告的位置来确定在哪里开设一个新设施,目的是优化代理与该设施之间距离的某个总体度量。然而,代理人是有策略的,如果这样做可能会导致他们选择更喜欢的设施位置,那么他们可以不报告自己的位置。我们的目标是设计出真实的机制,确保代理人无法通过误报获益。之前的很多工作都是从最坏情况的角度来研究这个问题的,但最近的一项工作提出了一个框架,当设计者得到一些关于代理真实位置的可能不正确的预测时,可以完善这些结果。我们的目标是同时提供强有力的一致性保证(即当提供给机制的预测正确时的保证)和接近最优的鲁棒性保证(即无论预测多么不准确,保证都能成立)。在这项工作中,我们重点研究了随机化在这一问题中的作用,并分析了在一维和二维欧几里得空间中,相对于平均主义社会成本度量可实现的最佳近似保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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