论文标题
优化投票的扭曲和比例公平性
Optimized Distortion and Proportional Fairness in Voting
论文作者
论文摘要
根据代理商提供的那些替代方案的排名,一项投票规则决定了一组M替代方案的概率分布。我们假设代理商在替代方案上具有主要的实用程序功能,但是投票规则只能访问这些实用程序引起的排名。我们评估了基于隐藏效用功能计算的社会福利和比例公平的衡量标准的投票规则的表现。 特别是,我们研究了投票规则的扭曲,这是最糟糕的措施。这是一个近似值,将最佳结果的功利主义社会福利与投票规则所选择的结果所产生的社会福利进行了比较,而在最坏的情况下,与输入概况和公用事业函数相比,与输入一致。先前的文献研究了单位和实用程序函数(将其标准化为1)的失真,并在最佳可能的失真中留下了一个小的渐近间隙。使用公平多赢家选举理论中的工具,我们提出了第一个投票规则,该规则实现了单位-MUM实用程序的最佳失真$θ(\ sqrt {m})$。我们的投票规则还达到了最佳的$θ(\ sqrt {m})$变形,包括较大类别的实用程序,包括单位范围和批准(0/1)公用事业。 然后,我们采取一种最糟糕的方法来定量衡量投票规则的公平性,称为比例公平。从非正式的角度来看,它衡量了凝聚力群体对投票结果的影响是否与群体规模成正比。我们表明,有一个投票规则,在不了解公用事业的情况下,可以实现$θ(\ log m)$ - 对比例公平的近似,因此也可以实现NASH福利和核心,从而使其在参与性预算中的应用中变得有趣。对于所有三个近似值,我们表明$θ(\ log M)$是最好的。
A voting rule decides on a probability distribution over a set of m alternatives, based on rankings of those alternatives provided by agents. We assume that agents have cardinal utility functions over the alternatives, but voting rules have access to only the rankings induced by these utilities. We evaluate how well voting rules do on measures of social welfare and of proportional fairness, computed based on the hidden utility functions. In particular, we study the distortion of voting rules, which is a worst-case measure. It is an approximation ratio comparing the utilitarian social welfare of the optimum outcome to the social welfare produced by the outcome selected by the voting rule, in the worst case over possible input profiles and utility functions that are consistent with the input. The previous literature has studied distortion with unit-sum utility functions (which are normalized to sum to 1), and left a small asymptotic gap in the best possible distortion. Using tools from the theory of fair multi-winner elections, we propose the first voting rule which achieves the optimal distortion $Θ(\sqrt{m})$ for unit-sum utilities. Our voting rule also achieves optimum $Θ(\sqrt{m})$ distortion for a larger class of utilities, including unit-range and approval (0/1) utilities. We then take a worst-case approach to a quantitative measure of the fairness of a voting rule, called proportional fairness. Informally, it measures whether the influence of cohesive groups of agents on the voting outcome is proportional to the group size. We show that there is a voting rule which, without knowledge of the utilities, can achieve a $Θ(\log m)$-approximation to proportional fairness, and thus also to Nash welfare and to the core, making it interesting for applications in participatory budgeting. For all three approximations, we show that $Θ(\log m)$ is the best possible.