论文标题

找到投票盘盒

Locating ballot drop boxes

论文作者

Schmidt, Adam P., Albert, Laura A.

论文摘要

几十年来,逐牌和投票盒的使用大大增长,作为回应,许多选举官员在投票基础设施中增加了新的掉落箱。但是,定位掉落箱的现有指南有限。在本文中,我们介绍了一个整数编程模型,即“下降盒”位置问题(DBLP),以找到掉落框。 DBLP考虑了成本,选民访问和风险的标准。下降箱系统的成本取决于添加掉落箱的固定成本以及两党团队定期从选定地点收集选票的收集旅行的运营成本。 DBLP利用覆盖集来确保每个选民都靠近下降框,并结合了一种新颖的量度,以衡量使用多个投票途径的能力。 DBLP被证明是NP-HARD,我们引入了一种启发式,以生成大量可行的解决方案,以便从后验中选择政策制定者。使用威斯康星州密尔沃基的真实案例研究,我们研究了DBLP的好处。结果表明,所提出的优化模型标识了跨多个标准良好性能的下降框位置。结果还表明,成本,访问和风险之间的权衡是非平凡的,它支持使用拟议的基于优化的方法来选择下降框位置。

For decades, voting-by-mail and the use of ballot drop boxes has substantially grown, and in response, many election officials have added new drop boxes to their voting infrastructure. However, existing guidance for locating drop boxes is limited. In this paper, we introduce an integer programming model, the drop box location problem (DBLP), to locate drop boxes. The DBLP considers criteria of cost, voter access, and risk. The cost of the drop box system is determined by the fixed cost of adding drop boxes and the operational cost of a collection tour by a bipartisan team who regularly collects ballots from selected locations. The DBLP utilizes covering sets to ensure each voter is in close proximity to a drop box and incorporates a novel measure of access to measure the ability to use multiple voting pathways to vote. The DBLP is shown to be NP-Hard, and we introduce a heuristic to generate a large number of feasible solutions for policy makers to select from a posteriori. Using a real-world case study of Milwaukee, WI, we study the benefit of the DBLP. The results demonstrate that the proposed optimization model identifies drop box locations that perform well across multiple criteria. The results also demonstrate that the trade-off between cost, access, and risk is non-trivial, which supports the use of the proposed optimization-based approach to select drop box locations.

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