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Accounting for multi-dimensional dependencies among decision-makers within a generalized model framework: An application to understanding shared mobility service usage levels

机译:在通用模型框架内考虑决策者之间的多维依赖性:了解共享移动服务使用级别的应用程序

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摘要

Activity-travel choices of individuals are influenced by spatial dependency effects. As individuals interact and exchange information with, or observe the behaviors of, those in close proximity of themselves, they are likely to shape their behavioral choices accordingly. For this reason, econometric choice models that account for spatial dependency effects have been developed and applied in a number of fields, including transportation. However, spatial dependence models to date have largely defined the strength of association across behavioral units based on spatial or geographic proximity. In the current context of social media platforms and ubiquitous intenet and mobile connectivity, the strength of associations among individuals is no longer solely dependent on spatial proximity. Rather, the strength of associations among individuals may be based on shared attitudes and preferences as well. In other words, behavioral choice models may benefit from defining dependency effects based on attitudes and constructs in addition to geographical constructs. In this paper, frequency of usage of car-sharing and ride-hailing services is modeled using a generalized heterogeneous data model (GHDM) framework that incorporates multi-dimensional dependencies among decision-makers. The model system is estimated on the 2014-2015 Puget Sound Regional Travel Study survey sample, with proximity in latent attitudinal constructs defined by a number of personality trait variables. Model estimation results show that social dependency effects arising from similarities in attitudes and preferences are significant in explaining shared mobility service usage. Ignoring such effects may lead to erroneous estimates of the adoption and usage of future transportation technologies and mobility services.
机译:个人的活动旅行选择受空间依赖效应的影响。当个人与彼此接近的人互动并交换信息或观察他们的行为时,他们很可能会相应地改变其行为选择。因此,已经开发了考虑空间依赖性影响的计量经济学选择模型,并将其应用于包括运输在内的许多领域。然而,迄今为止,空间依赖性模型已经很大程度上基于空间或地理邻近性定义了行为单位之间的关联强度。在当前的社交媒体平台以及无处不在的互联网和移动连接的背景下,个人之间的关联强度不再仅取决于空间邻近性。而是,个人之间的关联的强度也可以基于共同的态度和偏好。换句话说,除了地理构造之外,行为选择模型还可以受益于基于态度和构造来定义依赖效应。在本文中,使用通用的异构数据模型(GHDM)框架对汽车共享和乘车服务的使用频率进行建模,该框架将决策者之间的多维依赖性纳入其中。该模型系统是根据2014-2015年普吉特海湾地区旅行研究调查样本估计的,其中潜在的态度构造的接近程度由许多人格特质变量定义。模型估计结果表明,态度和偏好的相似性引起的社会依赖效应对于解释共享出行服务的使用具有重要意义。忽略这种影响可能导致对未来运输技术和出行服务的采用和使用产生错误的估计。

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