论文标题

是什么让您坚持那辆旧车?机器学习和多项式logit的共同见解,对车辆级别的交易决策

What Makes You Hold on to That Old Car? Joint Insights from Machine Learning and Multinomial Logit on Vehicle-level Transaction Decisions

论文作者

Jin, Ling, Lazar, Alina, Brown, Caitlin, Sun, Bingrong, Garikapati, Venu, Ravulaparthy, Srinath, Chen, Qianmiao, Sim, Alexander, Wu, Kesheng, Ho, Tin, Wenzel, Thomas, Spurlock, C. Anna

论文摘要

是什么让您握住那辆旧车?尽管绝大多数家用车仍由常规内燃机提供动力,但采用新兴车辆技术的进展将在很大程度上取决于现有车辆从家庭舰队中交易的时间。本研究利用全国代表性的纵向数据集,《收入动态》的小组研究,研究了家庭决定处置或替换给定的车辆的决定是:(1)受车辆属性的影响,(2)由家庭的同时社会人口和经济属性和经济属性介导的,以及(3)由关键的生命周期事件触发。再加上新开发的机器学习解释工具,TreeExplainer,我们展示了对机器学习模型的创新使用,以增强传统的Logit建模,以产生行为见解并提高模型性能。我们发现两种基于梯度的方法Catboost和LightGBM是解决此问题的最佳性能机器学习模型。在TreePlainer告知其模型规范之后,多项式逻辑模型可以达到相似的性能水平。机器学习和多项式logit模型都表明,虽然比较新的车辆更有可能被处置或更换,但这种概率降低了,因为车辆为家庭服务的时间更长。我们发现已婚家庭,具有高等教育水平的家庭,房主和年龄较大的家庭往往会更长的时间。发现生命事件,例如分娩,住宅搬迁以及家庭成分和收入的变化,可增加车辆处置和/或替代。我们提供了有关更换或处置时机的其他见解,尤其是儿童和分娩事件的存在与年轻父母的车辆更换更加密切相关。

What makes you hold on that old car? While the vast majority of the household vehicles are still powered by conventional internal combustion engines, the progress of adopting emerging vehicle technologies will critically depend on how soon the existing vehicles are transacted out of the household fleet. Leveraging a nationally representative longitudinal data set, the Panel Study of Income Dynamics, this study examines how household decisions to dispose of or replace a given vehicle are: (1) influenced by the vehicle's attributes, (2) mediated by households' concurrent socio-demographic and economic attributes, and (3) triggered by key life cycle events. Coupled with a newly developed machine learning interpretation tool, TreeExplainer, we demonstrate an innovative use of machine learning models to augment traditional logit modeling to both generate behavioral insights and improve model performance. We find the two gradient-boosting-based methods, CatBoost and LightGBM, are the best performing machine learning models for this problem. The multinomial logistic model can achieve similar performance levels after its model specification is informed by TreeExplainer. Both machine learning and multinomial logit models suggest that while older vehicles are more likely to be disposed of or replaced than newer ones, such probability decreases as the vehicles serve the family longer. We find that married families, families with higher education levels, homeowners, and older families tend to keep their vehicles longer. Life events such as childbirth, residential relocation, and change of household composition and income are found to increase vehicle disposal and/or replacement. We provide additional insights on the timing of vehicle replacement or disposal, in particular, the presence of children and childbirth events are more strongly associated with vehicle replacement among younger parents.

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