数据驱动的决策:拼车案例对工程经理的启示

Q1 Business, Management and Accounting
Xuan Wang;Yaojie Li;Scott Smith;Helmut Schneider
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引用次数: 0

摘要

随着数据驱动的决策变得普遍,研究需要提供更多的证据来指导用户决策,特别是在交通系统方面。与此同时,拼车被吹捧可以减少醉酒驾驶的死亡人数,尽管之前的研究提供了不一致的结果。先前对该主题的研究的局限性是在解决潜在混淆的影响时缺乏足够的实验控制。这个问题可能会影响到关于拼车服务的部署是否导致醉酒驾驶死亡人数大幅减少的潜在假设和结论。本文利用统计建模来控制年龄、教育、车辆行驶里程和大都市规模。研究显示,在17-34岁的年轻人中,拼车使酒后驾车死亡人数下降了13.8%,但对35-65岁的司机没有显著影响。此外,研究结果还表明,城市人口、车辆行驶里程和受教育程度会影响年轻人,而同样的特征对老年人没有显著影响。此外,这篇文章还指出,UberX的推出可以作为一种出行规划选择,以减少年轻司机而不是年长司机的酒后驾车死亡人数。基于分析结果,提出了对交通平台和软件工程管理人员的多重启示,特别是在调度算法、需求分析和拼车安全和安全领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Decision Making: The Case of Ridesharing With Implications for Engineering Managers
As data-driven decision making becomes prevalent, research needs to provide more evidence to direct user decision making, particularly concerning transportation systems. In concurrence, ridesharing has been touted to reduce driving-while-intoxicated fatalities, albeit prior studies have provided inconsistent findings. A limitation of prior research on this topic is lacking adequate experimental controls while addressing the impact of potential confounds. This issue may affect potential assumptions and conclusions on whether the deployment of ridesharing services has led to a considerable reduction in driving-while-intoxicated fatalities. The present article leverages statistical modeling to control age, education, vehicle miles traveled, and metropolitan size. It reveals that ridesharing represented a 13.8% decline in driving-while-intoxicated fatalities among youths’ ages 17–34, but without significantly affecting drivers’ ages 35–65. Also, the results suggest that city population, vehicle miles traveled, and educational attainment can affect younger adults, whereas the same features were not significant for older adults. Furthermore, the article suggests that the initiation of UberX can serve as a ride-planning option to reduce driving-while-intoxicated fatalities among younger rather than older drivers. Based on the analysis results, multiple implications for transportation platform and software engineering managers are provided, especially in the areas of dispatch algorithms, requirement analysis, and ridesharing security and safety.
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来源期刊
IEEE Engineering Management Review
IEEE Engineering Management Review Business, Management and Accounting-Management of Technology and Innovation
CiteScore
7.40
自引率
0.00%
发文量
97
期刊介绍: Reprints articles from other publications of significant interest to members. The papers are aimed at those engaged in managing research, development, or engineering activities. Reprints make it possible for the readers to receive the best of today"s literature without having to subscribe to and read other periodicals.
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