纽约市电网维修计划的多元评估

R. Passonneau, Ashish Tomar, Somnath Sarkar, Haimonti Dutta, Axinia Radeva
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引用次数: 1

摘要

我们评估了对纽约市二级电网管理的检查维修计划的影响。人们感兴趣的问题是,维修是否会减少未来导致服务中断的事件的发生率,这些事件从轻微到严重不等。在没有随机实验的情况下,确定治疗组和对照组的一个关键挑战涉及在特定年份选择要检查的电结构的固有偏见。为了弥补偏差,我们为每年的结构进行检查修复的倾向构建了单独的模型。倾向模型解释了被检查的结构在不同年份之间的差异。为了对治疗结果进行建模,我们使用了基于许多弱学习器的加性效应的统计方法。我们的研究结果表明,在五年的检查周期中,检查维修更有利于早期,这符合固有的偏见,即在早期检查已知有问题的结构。
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Multivariate Assessment of a Repair Program for a New York City Electrical Grid
We assess the impact of an inspection repair program administered to the secondary electrical grid in New York City. The question of interest is whether repairs reduce the incidence of future events that cause service disruptions ranging from minor to serious ones. A key challenge in defining treatment and control groups in the absence of a randomized experiment involved an inherent bias in selection of electrical structures to be inspected in a given year. To compensate for the bias, we construct separate models for each year of the propensity for a structure to have an inspection repair. The propensity models account for differences across years in the structures that get inspected. To model the treatment outcome, we use a statistical approach based on the additive effects of many weak learners. Our results indicate that inspection repairs are more beneficial earlier in the five-year inspection cycle, which accords with the inherent bias to inspect structures in earlier years that are known to have problems.
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