论文标题

公共交通的股权促进

Equity Promotion in Public Transportation

论文作者

Pramanik, Anik, Xu, Pan, Xu, Yifan

论文摘要

有许多新闻报道报道了贫困家庭遇到的障碍,以获取公共交通。这些障碍给这些贫困家庭带来了很大的不便,更重要的是,它们造成了许多社会不平等。解决该问题的典型方法是建立更多的运输基础设施,以提供更多机会来进入公共交通,尤其是对于那些被剥夺的社区的人。示例包括添加更多的公交线路,将有需要的居民连接到铁路系统,并将现有的公交线扩展到社会经济地位低的地区。最近,提出了一项新策略,即利用无处不在的乘车服务将处境不利的家庭与最近的公共交通联系起来。与以前的基于基础设施的解决方案相比,基于乘车的策略具有一些独家优势,例如更高的有效性和更灵活的功能。 在本文中,我们提出了一个优化模型,以研究如何将两种方法整合在一起以进行公平促进。具体而言,我们旨在设计一种将给定有限预算分配给不同候选计划的策略,以使整体社会公平是最大化的,这被定义为所有预先指定的受保护家庭的最低覆盖率(基于种族,收入等)。我们设计了基于线性的(LP)圆形算法,该算法被证明达到1-1/e的最佳近似值。此外,我们通过将在芝加哥市收集的多个公共数据集外包外包的真实数据中测试了算法。实验结果证实了我们的理论预测,并证明了基于LP的策略在促进社会公平方面的有效性,尤其是在预算不足的情况下。

There are many news articles reporting the obstacles confronting poverty-stricken households in access to public transits. These barriers create a great deal of inconveniences for these impoverished families and more importantly, they contribute a lot of social inequalities. A typical approach addressing the issue is to build more transport infrastructure to offer more opportunities to access the public transits especially for those deprived communities. Examples include adding more bus lines connecting needy residents to railways systems and extending existing bus lines to areas with low socioeconomic status. Recently, a new strategy is proposed, which is to harness the ubiquitous ride-hailing services to connect disadvantaged households with the nearest public transportations. Compared with the former infrastructure-based solution, the ride-hailing-based strategy enjoys a few exclusive benefits such as higher effectiveness and more flexibility. In this paper, we propose an optimization model to study how to integrate the two approaches together for equity-promotion purposes. Specifically, we aim to design a strategy of allocating a given limited budget to different candidate programs such that the overall social equity is maximized, which is defined as the minimum covering ratio among all pre-specified protected groups of households (based on race, income, etc.). We have designed a linear-programming (LP) based rounding algorithm, which proves to achieve an optimal approximation ratio of 1-1/e. Additionally, we test our algorithm against a few baselines on real data assembled by outsourcing multiple public datasets collected in the city of Chicago. Experimental results confirm our theoretical predictions and demonstrate the effectiveness of our LP-based strategy in promoting social equity, especially when the budget is insufficient.

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