Disaggregated approach to urban trip distribution: a comparative analysis between artificial neural networks and discrete choice models

Marina Urano de Carvalho Caldas, Cira Souza Pitombo, Felipe Lobo Umbelino de Souza, Renan Favero
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Abstract

Discrete choice models have been used over the years in disaggregated approaches to forecast destination choices.  However, there are important constraints in some of these models that pose obstacles to using them, such as the Independence of Irrelevant Alternatives (IIA) property in the Multinomial Logit model, the need to assume specific structures and high calibration times, depending on the complexity of the case being evaluated. However, some of these mentioned constraints could be mitigated using Mixed Models or Nested Logit.  Therefore, this paper proposes a comparative analysis between the Artificial Neural Network (ANNs), the Multinomial and Nested Logit models for disaggregated forecasting of urban trip distribution. A case study was conducted in a medium-sized Brazilian city, Santa Maria (RS), Brazil. The data used come from a household survey, prepared for the Urban Mobility Master Plan. For the sake of comparison, hit rates and frequency of trip distribution distances were analyzed, showing that ANNs can be as efficient as the Discrete Choice models for disaggregated forecasting of urban trip destination without, however, assuming some constraints. Finally, based on the results obtained, the efficiency of ANNs is observed for predicting alternatives with a low number of observations.  They are important tools for obtaining Origin-Destination matrices from incomplete sample matrices or with a low number of observations.  However, it is important to mention that discrete choice models can provide important information for the analyst, such as statistical significance of parameters, elasticities, subjective value of attributes, etc.
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城市出行分布的分解方法——人工神经网络与离散选择模型的比较分析
多年来,离散选择模型已被用于预测目的地选择的分类方法。然而,在其中一些模型中存在一些重要的限制因素,这些限制因素对使用它们构成了障碍,例如多项式Logit模型中不相关替代品的独立性(IIA)特性,根据评估案例的复杂性,需要假设特定的结构和高校准时间。但是,可以使用混合模型或嵌套Logit来减轻其中的一些约束。因此,本文提出了对人工神经网络(ANNs)、多项式和嵌套Logit模型进行城市出行分布分类预测的比较分析。在巴西的一个中等城市圣玛丽亚(RS)进行了一项案例研究。所使用的数据来自为城市流动性总体规划编制的一项家庭调查。为了进行比较,分析了出行分布距离的命中率和频率,表明在不假设一些约束的情况下,Ann可以与离散选择模型一样有效地对城市出行目的地进行分类预测。最后,基于所获得的结果,观察了人工神经网络在预测观测次数较少的备选方案方面的效率。它们是从不完整的样本矩阵或观测次数较少的情况下获得起点-终点矩阵的重要工具。然而,值得一提的是,离散选择模型可以为分析师提供重要信息,如参数的统计显著性、弹性、属性的主观价值等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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发文量
39
审稿时长
10 weeks
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