TRUSTS: Scheduling Randomized Patrols for Fare Inspection in Transit Systems

Zhengyu Yin, A. Jiang, Milind Tambe, Christopher Kiekintveld, Kevin Leyton-Brown, T. Sandholm, John P. Sullivan
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引用次数: 192

Abstract

In proof-of-payment transit systems, passengers are legally required to purchase tickets before entering but are not physically forced to do so. Instead, patrol units move about the transit system, inspecting the tickets of passengers, who face fines if caught fare evading. The deterrence of such fines depends on the unpredictability and effectiveness of the patrols. In this paper, we present TRUSTS, an application for scheduling randomized patrols for fare inspection in transit systems. TRUSTS models the problem of computing patrol strategies as a leader-follower Stackelberg game where the objective is to deter fare evasion and hence maximize revenue. This problem differs from previously studied Stackelberg settings in that the leader strategies must satisfy massive temporal and spatial constraints; moreover, unlike in these counterterrorism-motivated Stackelberg applications, a large fraction of the ridership might realistically consider fare evasion, and so the number of followers is potentially huge. A third key novelty in our work is deliberate simplification of leader strategies to make patrols easier to be executed. We present an efficient algorithm for computing such patrol strategies and present experimental results using real-world ridership data from the Los Angeles Metro Rail system. The Los Angeles County Sheriff’s department has begun trials of TRUSTS.
信任:调度随机巡逻票价检查在交通系统
在支付证明的运输系统中,法律要求乘客在进入前购买车票,但并不强迫他们这样做。取而代之的是,巡逻部队在交通系统中巡视,检查乘客的车票,如果被发现逃票,他们将面临罚款。这种罚款的威慑力取决于巡逻的不可预测性和有效性。在这篇论文中,我们提出了一种用于在交通系统中安排随机巡逻以检查票价的方法。trust将计算巡逻策略的问题建模为领导者-追随者Stackelberg博弈,其目标是阻止逃票,从而使收益最大化。该问题不同于前人研究的Stackelberg设置,因为领导者策略必须满足大量的时间和空间约束;此外,与这些以反恐为动机的Stackelberg应用程序不同,很大一部分乘客可能会考虑逃票,因此追随者的数量可能会很大。我们工作中的第三个关键创新点是有意简化领导策略,使巡逻更容易执行。我们提出了一种有效的算法来计算这种巡逻策略,并使用洛杉矶地铁系统的真实客流量数据给出了实验结果。洛杉矶县治安部门已经开始对信托基金进行试验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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