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Estimating flexible route choice models using sparse data

机译:使用稀疏数据估算灵活的路线选择模型

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GPS and nomad devices are increasingly used to provide data from individuals in urban traffic networks. In many different applications, it is important to predict the continuation of an observed path, and also, given sparse data, predict where the individual (or vehicle) has been. Estimating the perceived cost functions is a difficult statistical estimation problem, for different reasons. First, the choice set is typically very large. Second, it may be important to take into account the correlation between the (generalized) costs of different routes, and thus allow for realistic substitution patterns. Third, due to technical or privacy considerations, the data may be temporally and spatially sparse, with only partially observed paths. Finally, the position of vehicles may have measurement errors. We address all these problems using a indirect inference approach. We demonstrate the feasibility of the proposed estimator in a model with random link costs, allowing for a natural correlation structure across paths, where the full choice set is considered.
机译:GPS和游牧设备越来越多地用于提供城市交通网络中个人的数据。在许多不同的应用中,重要的是预测观察到的路径的连续性,并且在给定稀疏数据的情况下,预测个人(或车辆)的位置也很重要。由于不同的原因,估计感知成本函数是一个困难的统计估计问题。首先,选择集通常很大。其次,重要的是要考虑到不同路线的(一般)成本之间的相关性,从而考虑到现实的替代模式。第三,由于技术或隐私方面的考虑,数据可能在时间和空间上稀疏,只有部分观察到的路径。最后,车辆的位置可能会有测量误差。我们使用间接推理方法解决所有这些问题。我们证明了在具有随机链路成本的模型中提出的估计器的可行性,该模型允许考虑路径的自然相关结构,其中考虑了完整选择集。

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