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STAD: Spatio-Temporal Adjustment of Traffic-Oblivious Travel-Time Estimation

机译:STAD:交通时差的时差估计的时空调整

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Travel time estimation is an important component in modern transportation applications. The state of the art techniques for travel time estimation use GPS traces to learn the weights of a road network, often modeled as a directed graph, then apply Dijkstra-like algorithms to find shortest paths. Travel time is then computed as the sum of edge weights on the returned path. In order to enable time-dependency, existing systems compute multiple weighted graphs corresponding to different time windows. These graphs are often optimized offline before they are deployed into production routing engines, causing a serious engineering overhead. In this paper, we present STAD, a system that adjusts – on the fly – travel time estimates for any trip request expressed in the form of origin, destination, and departure time. STAD uses machine learning and sparse trips data to learn the imperfections of any basic routing engine, before it turns it into a full-fledged time-dependent system capable of adjusting travel times to real traffic conditions in a city. STAD leverages the spatio-temporal properties of traffic by combining spatial features such as departing and destination geographic zones with temporal features such as departing time and day to significantly improve the travel time estimates of the basic routing engine. Experiments on real trip datasets from Doha, New York City, and Porto show a reduction in median absolute errors of 14% in the first two cities and 29% in the latter. We also show that STAD performs better than different commercial and research baselines in all three cities.
机译:行程时间估计是现代交通应用中的重要组成部分。行驶时间估计的最新技术是使用GPS轨迹来学习通常被建模为有向图的道路网络的权重,然后应用类似Dijkstra的算法来找到最短路径。然后将行程时间计算为返回路径上边缘权重的总和。为了实现时间依赖性,现有系统计算对应于不同时间窗口的多个加权图。这些图通常先离线进行优化,然后再部署到生产路由引擎中,这会导致严重的工程开销。在本文中,我们介绍了STAD,该系统可以即时调整以起点,目的地和出发时间表示的任何旅行请求的旅行时间估计。 STAD使用机器学习和稀疏旅行数据来学习任何基本路由引擎的不完善之处,然后将其转变为功能完善的与时间相关的系统,该系统能够根据城市的实际交通状况调整出行时间。 STAD通过将空间特征(例如出发地和目的地地理区域)与时间特征(例如出发时间和日期)相结合来利用交通的时空特性,从而显着改善基本路由引擎的行驶时间估计。来自多哈,纽约和波尔图的真实旅行数据集的实验表明,前两个城市的中位数绝对误差降低了14%,而后两个城市则降低了29%。我们还表明,在所有三个城市中,STAD的表现均优于不同的商业和研究基准。

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