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FGST: Fine-Grained Spatial-Temporal Based Regression for Stationless Bike Traffic Prediction

机译:FGST:基于细粒度时空的无站自行车流量预测回归

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Currently, fully stationless bike sharing systems, such as Mobike and Ofo are becoming increasingly popular in both China and some big cities in the world. Different from traditional bike sharing systems that have to build a set of bike stations at different locations of a city and each station is associated with a fixed number of bike docks, there are no stations in stationless bike sharing systems. Thus users can flexibly check-out/return the bikes at arbitrary locations. Such a brand new bike-sharing mode better meets people's short travel demand, but also poses new challenges for performing effective system management due to the extremely unbalanced bike usage demand in different areas and time intervals. Therefore, it is crucial to accurately predict the future bike traffic for helping the service provider rebalance the bikes timely. In this paper, we propose a Fine-Grained Spatial-Temporal based regression model named FGST to predict the future bike traffic in a stationless bike sharing system. We motivate the method via discovering the spatial-temporal correlation and the localized conservative rules of the bike check-out and check-in patterns. Our model also makes use of external factors like Point-Of-Interest(POI) informations to improve the prediction. Extensive experiments on a large Mobike trip dataset demonstrate that our approach outperforms baseline methods by a significant margin.
机译:当前,诸如Mobike和Ofo之类的完全无固定站的自行车共享系统在中国和世界上一些大城市中都变得越来越流行。与传统的自行车共享系统不同,传统的自行车共享系统必须在城市的不同位置建立一组自行车站点,并且每个站点都与固定数量的自行车停靠站相关联,无站自行车共享系统中没有站点。因此,用户可以在任意位置灵活地签出/归还自行车。这种全新的自行车共享模式可以更好地满足人们的短途旅行需求,但由于在不同地区和时间间隔内对自行车的使用需求极不平衡,因此对执行有效的系统管理也提出了新的挑战。因此,准确预测未来的自行车流量对于帮助服务提供商及时重新平衡自行车至关重要。在本文中,我们提出了一种基于细粒度时空的回归模型FGST,以预测无站自行车共享系统中未来的自行车流量。我们通过发现自行车结帐和登记模式的时空相关性和局部保守规则来激发这种方法。我们的模型还利用诸如兴趣点(POI)信息之类的外部因素来改善预测。在大型Mobike行程数据集上进行的大量实验表明,我们的方法明显优于基线方法。

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