Mechanism Design via the Interim Relaxation

Kshipra Bhawalkar, Marios Mertzanidis, Divyarthi Mohan, Alexandros Psomas
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Abstract

We study revenue maximization for agents with additive preferences, subject to downward-closed constraints on the set of feasible allocations. In seminal work, Alaei~\cite{alaei2014bayesian} introduced a powerful multi-to-single agent reduction based on an ex-ante relaxation of the multi-agent problem. This reduction employs a rounding procedure which is an online contention resolution scheme (OCRS) in disguise, a now widely-used method for rounding fractional solutions in online Bayesian and stochastic optimization problems. In this paper, we leverage our vantage point, 10 years after the work of Alaei, with a rich OCRS toolkit and modern approaches to analyzing multi-agent mechanisms; we introduce a general framework for designing non-sequential and sequential multi-agent, revenue-maximizing mechanisms, capturing a wide variety of problems Alaei's framework could not address. Our framework uses an \emph{interim} relaxation, that is rounded to a feasible mechanism using what we call a two-level OCRS, which allows for some structured dependence between the activation of its input elements. For a wide family of constraints, we can construct such schemes using existing OCRSs as a black box; for other constraints, such as knapsack, we construct such schemes from scratch. We demonstrate numerous applications of our framework, including a sequential mechanism that guarantees a $\frac{2e}{e-1} \approx 3.16$ approximation to the optimal revenue for the case of additive agents subject to matroid feasibility constraints. We also show how our framework can be easily extended to multi-parameter procurement auctions, where we provide an OCRS for Stochastic Knapsack that might be of independent interest.
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通过临时松弛进行机制设计
我们研究的是具有相加偏好的代理的收益最大化问题,该问题受到可行分配集合的向下封闭约束。在开创性的工作中,Alaei~cite{alaei2014bayesian}基于多代理问题的事前放松,引入了一种强大的多代理到单代理的还原。这种还原采用了一种舍入程序,它是一种变相的在线争点解决方案(OCRS),是一种目前在在线贝叶斯和随机优化问题中广泛使用的舍入分数解决方案的方法。在本文中,我们利用自身的有利条件,在 Alaei 工作 10 年后,利用丰富的 OCRS 工具包和现代方法来分析多代理机制;我们引入了一个设计非顺序和顺序多代理、收益最大化机制的通用框架,涵盖了 Alaei 框架无法解决的各种问题。我们的框架使用了一种emph{interim}松弛方法,即使用我们所说的两级OCRS对可行机制进行舍入,这种方法允许输入元素的激活之间存在一定的结构依赖性。对于多种约束条件,我们可以使用现有的 OCRS 作为黑盒来构建此类方案;而对于其他约束条件,如 knapsack,我们则从头开始构建此类方案。我们展示了我们的框架的大量应用,包括一种顺序机制,它保证了在加法代理的情况下,在矩阵可行性约束条件下,最佳收益的近似值为 3.16 美元。我们还展示了如何轻松地将我们的框架扩展到多参数采购拍卖,并在此基础上提供了一个可能会引起独立兴趣的随机麻袋的 OCRS。
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