eXplainable DEA approach for evaluating performance of public transport origin-destination pairs

IF 4.6 3区 工程技术 Q1 ECONOMICS
Eun Hak Lee
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引用次数: 0

Abstract

Understanding public transportation efficiency is crucial to enhancing urban mobility and economic growth. This study aims to evaluate the efficiency of the public transportation system using an explainable data envelopment analysis approach. Specifically, data envelopment analysis and explainable artificial intelligence techniques were incorporated to uncover the black-box relationship between the inputs and outputs of the efficiency score. The efficiency of the public transportation system was defined as travel times for subway, bus, and multimodal modes relative to the number of trips and travel distances. The efficiency score was evaluated by the origin-destination pair unit. As a result, the efficiency score was estimated to be 0.69 on average, indicating that a reduction of 31% in travel times is required to achieve a perfect score of 1.00. Among the 33,313 origin-destination pairs, 39 had a perfect score of 1.00. The results of the interpretation model showed the order of importance for features—buses, subways, and multimodal modes—with SHapley Additive Explanations values of 0.047, 0.029, and 0.022, respectively. These results suggest that focusing primarily on reducing bus travel times is effective for improving overall efficiency. In this manner, the explainable data envelopment analysis helps measure performance, understand results, and suggest improvement directions.
评估公共交通始发站对绩效的易用性 DEA 方法
了解公共交通效率对于提高城市流动性和经济增长至关重要。本研究旨在利用可解释数据包络分析方法评估公共交通系统的效率。具体来说,研究采用了数据包络分析和可解释人工智能技术,以揭示效率评分的输入和输出之间的黑箱关系。公共交通系统的效率被定义为地铁、公交和多式联运模式相对于出行次数和出行距离的出行时间。效率得分以起点-终点对为单位进行评估。结果,效率得分平均估计为 0.69,这表明要达到 1.00 的满分,旅行时间需要减少 31%。在 33,313 对出发地-目的地中,有 39 对达到了 1.00 的满分。解释模型的结果显示了公共汽车、地铁和多式联运模式的重要性顺序,SHapley Additive Explanations 值分别为 0.047、0.029 和 0.022。这些结果表明,将主要精力放在缩短公交车旅行时间上对提高整体效率是有效的。因此,可解释数据包络分析有助于衡量绩效、理解结果并提出改进方向。
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来源期刊
CiteScore
8.40
自引率
2.60%
发文量
59
审稿时长
60 days
期刊介绍: Research in Transportation Economics is a journal devoted to the dissemination of high quality economics research in the field of transportation. The content covers a wide variety of topics relating to the economics aspects of transportation, government regulatory policies regarding transportation, and issues of concern to transportation industry planners. The unifying theme throughout the papers is the application of economic theory and/or applied economic methodologies to transportation questions.
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