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Multi-Output Gaussian Processes for Crowdsourced Traffic Data Imputation

机译:众包交通数据插补的多输出高斯过程

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摘要

Traffic speed data imputation is a fundamental challenge for data-driven transport analysis. In recent years, with the ubiquity of GPS-enabled devices and the widespread use of crowdsourcing alternatives for the collection of traffic data, transportation professionals increasingly look to such user-generated data for a good deal of analysis, planning, and decision support applications. However, due to the mechanics of the data collection process, crowdsourced traffic data such as probe-vehicle data is highly prone to missing observations, making accurate imputation crucial for the success of any application that makes use of that type of data. In this paper, we propose the use of multi-output Gaussian processes (GPs) to model the complex spatial and temporal patterns in crowdsourced traffic data. While the Bayesian nonparametric formalism of GPs allows us to model observation uncertainty, the multi-output extension based on convolution processes effectively enables us to capture complex spatial dependencies between nearby road segments. Using six months of crowdsourced traffic speed data or "probe vehicle data" for several locations in Copenhagen, the proposed approach is empirically shown to significantly outperform popular state-of-the-art imputation methods.
机译:交通速度数据归因是数据驱动的运输分析的基本挑战。近年来,由于支持GPS的设备无处不在,并且广泛采用众包替代方法来收集交通数据,运输专业人员越来越多地将此类用户生成的数据用于大量的分析,规划和决策支持应用程序。但是,由于数据收集过程的机制,众包交通数据(例如探查车数据)极容易丢失观察结果,因此准确估算对于使用该类型数据的任何应用程序的成功至关重要。在本文中,我们建议使用多输出高斯过程(GPs)对众包交通数据中的复杂时空模式进行建模。 GP的贝叶斯非参数形式主义使我们能够对观测不确定性进行建模,而基于卷积过程的多输出扩展有效地使我们能够捕获附近路段之间的复杂空间依存关系。使用六个月的众包交通速度数据或“探测车数据”到哥本哈根的多个地点,从经验上证明,所提出的方法明显优于流行的最新估算方法。

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