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An ensemble-learning method for potential traffic hotspots detection on heterogeneous spatio-temporal data in highway domain

机译:一种在公路域中异构时空数据潜在交通热点检测的集合学习方法

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Inter-city highway plays an important role in modern urban life and generates sensory data with spatio-temporal characteristics. Its current situation and future trends are valuable for vehicles guidance and transportation security management. As a domain routine analysis, daily detection of traffic hotspots faces challenges in efficiency and precision, because huge data deteriorates processing latency and many correlative factors cannot be fully considered. In this paper, an ensemble-learning based method for potential traffic hotspots detection is proposed. Considering time, space, meteorology, and calendar conditions, daily traffic volume is modeled on heterogeneous data, and trends predictive error can be reduced through gradient boosting regression technology. Using real-world data from one Chinese provincial highway, extensive experiments and case studies show our methods with second-level executive latency with a distinct improvement in predictive precision.
机译:城市间高速公路在现代城市生活中发挥着重要作用,并产生具有时空特性的感官数据。其现状和未来趋势对车辆的指导和运输安全管理有价值。作为域常规分析,日常检测交通热点面临效率和精度的挑战,因为巨大的数据恶化处理延迟,并且无法完全考虑许多相关因素。本文提出了一种基于集合学习的潜在业务热点检测方法。考虑到时间,空间,气象和日历条件,日常流量体积在异构数据上建模,通过梯度升压回归技术可以减少趋势预测误差。利用来自中国省级公路的真实数据,广泛的实验和案例研究表明了我们具有第二级执行延迟的方法,具有明显的预测精度。

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