基于神经网络的公共项目再分配问题

Guanhua Wang, Wuli Zuo, M. Guo
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引用次数: 1

摘要

多智能体系统中的许多重要问题都涉及到资源分配。自私自利的代理人可能会对他们的估值撒谎,如果这样做会增加他们自己的效用。因此,有必要设计具有期望属性和目标的机制(集体决策规则)。VCG的再分配机制是有效的(最重视资源的代理将被分配),不受策略约束(代理没有动机对其估值撒谎),并且是弱预算平衡的(没有赤字)。本文重点研究了经典公共项目问题的VCG再分配机制,该问题需要一组代理来决定是否建立一个非排他性公共项目。我们通过神经网络设计两个福利最大化目标的机制:最坏情况下的最优和期望的最优。以往的研究显示了3种药剂的两种最坏情况最优机制,但尚未确定超过3种药剂的最坏情况最优机制。对于期望福利最大化,没有现有的结果。我们使用神经网络来设计VCG再分配机制。利用神经网络设计了具有单位需求的多单元拍卖的再分配机制。我们表明,对于公共项目问题,先前提出的神经网络,导致具有单位需求的多单位拍卖的最优/近最优机制,在公共项目问题上表现糟糕。我们在多个方面显著改进了现有的网络:我们进行了一个GAN网络来生成最坏情况类型的轮廓,并将先验分布馈送到损失函数中,为期望中最优目标提供质量梯度。我们采用降维的方法来处理大量的智能体,并将监督学习引入到最佳的人工机制中作为初始化,然后将其留给无监督学习。在最坏情况下,我们得到了比现有手动机制更好的结果,在期望最优目标下,我们的机制性能接近理论最优性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Redistribution in Public Project Problems via Neural Networks
Many important problems in multiagent systems involve resource allocations. Self-interested agents may lie about their valuations if doing so increases their own utilities. Therefore, it is necessary to design mechanisms (collective decision-making rules) with desired properties and objectives. The VCG redistribution mechanisms are efficient (the agents who value the resources the most will be allocated), strategy-proof (the agents have no incentives to lie about their valuations), and weakly budget-balanced (no deficits). We focus on the VCG redistribution mechanisms for the classic public project problem, where a group of agents needs to decide whether or not to build a non-excludable public project. We design mechanisms via neural networks with two welfare-maximizing objectives: optimal in the worst case and optimal in expectation. Previous studies showed two worst-case optimal mechanisms for 3 agents, but worst-case optimal mechanisms have not been identified for more than 3 agents. For maximizing expected welfare, there are no existing results. We use neural networks to design VCG redistribution mechanisms. Neural networks have been used to design the redistribution mechanisms for multi-unit auctions with unit demand. We show that for the public project problem, the previously proposed neural networks, which led to optimal/near-optimal mechanisms for multi-unit auctions with unit demand, perform abysmally for the public project problem. We significantly improve the existing networks on multiple fronts: We conduct a GAN network to generate worst-case type profiles and feed prior distribution into loss function to provide quality gradients for the optimal-in-expectation objective. We adopt dimension reduction to handle a larger number of agents and we adopt supervised learning into the best manual mechanism as initialization, then leave it into unsupervised learning. For the worst case, we get better results than the existing manual mechanisms, and for the optimal-in-expectation objective, our mechanisms’ performances are close to the theoretical optimal performance.
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