论文标题
Maxmin参与预算
Maxmin Participatory Budgeting
论文作者
论文摘要
参与性预算(PB)是一种受欢迎的投票方法,根据该项目,根据该项目的偏好,预算有限的预算在一组项目中分配。 PB广泛归类为可划分的PB(如果项目是可以分分实现的)和不可分割的PB(如果项目是原子的)。在不可分割的PB背景下,平等主义是PB的重要目标,并没有得到太多关注。本文通过在不可分割的PB的背景下对自然平等统治(Maxmin参与预算(MPB))的详细研究解决了这一差距。我们的研究分为两部分:(1)计算(2)公理。在第一部分中,我们证明MPB在计算上很难,并通过某些良好动机参数参数化时给出伪多项式时间和多项式时间算法。我们提出了一种实现MPB的算法,可为实例的限制空间提供添加近似保证,并从经验上表明我们的算法实际上提供了现实世界中PB数据集的精确最佳解决方案。我们还建立了由详尽策略PB算法的家族为MPB实现的近似比的上限。在第二部分中,我们通过在文献中概括已知的公理来对MPB规则进行公理研究。我们的研究导致了新的公理,最大覆盖范围的提议,该覆盖范围捕捉了公平方面。我们证明MPB满足最大覆盖范围。
Participatory Budgeting (PB) is a popular voting method by which a limited budget is divided among a set of projects, based on the preferences of voters over the projects. PB is broadly categorised as divisible PB (if the projects are fractionally implementable) and indivisible PB (if the projects are atomic). Egalitarianism, an important objective in PB, has not received much attention in the context of indivisible PB. This paper addresses this gap through a detailed study of a natural egalitarian rule, Maxmin Participatory Budgeting (MPB), in the context of indivisible PB. Our study is in two parts: (1) computational (2) axiomatic. In the first part, we prove that MPB is computationally hard and give pseudo-polynomial time and polynomial-time algorithms when parameterized by certain well-motivated parameters. We propose an algorithm that achieves for MPB, additive approximation guarantees for restricted spaces of instances and empirically show that our algorithm in fact gives exact optimal solutions on real-world PB datasets. We also establish an upper bound on the approximation ratio achievable for MPB by the family of exhaustive strategy-proof PB algorithms. In the second part, we undertake an axiomatic study of the MPB rule by generalizing known axioms in the literature. Our study leads to the proposal of a new axiom, maximal coverage, which captures fairness aspects. We prove that MPB satisfies maximal coverage.