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Optimizing Payments in Dominant-Strategy Mechanisms for Multi-Parameter Domains

机译:多参数域的主导策略机制中的付款优化

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In Al research, mechanism design is typically used to allocate tasks and resources to agents holding private information about their values for possible allocations. In this context, optimizing payments within the Groves class has recently received much attention, mostly under the assumption that agent's private information is single-dimensional. Our work tackles this problem in multi-parameter domains. Specifically, we develop a generic technique to look for a best Groves mechanism for any given mechanism design problem. Our method is based on partitioning the spaces of agent values and payment functions into regions, on each of which we are able to define a feasible linear payment function. Under certain geometric conditions on partitions of the two spaces this function is optimal. We illustrate our method by applying it to the problem of allocating heterogeneous items.
机译:在A1研究中,机制设计通常用于将任务和资源分配给持有有关其值的私人信息以进行可能分配的代理。在这种情况下,最近在Groves类中优化付款受到了很多关注,主要是在假设代理人的私人信息是一维的情况下。我们的工作在多参数领域解决了这个问题。具体来说,我们开发了一种通用技术来针对任何给定的机构设计问题寻找最佳的Groves机构。我们的方法基于将代理商价值和支付功能的空间划分为多个区域,我们可以在每个区域上定义可行的线性支付功能。在两个空间的分区上的某些几何条件下,此功能最佳。我们通过将其应用于分配异构项目的问题来说明我们的方法。

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