论文标题
POLESTAR:智能,高效且全国范围内的公共交通路线引擎
Polestar: An Intelligent, Efficient and National-Wide Public Transportation Routing Engine
论文作者
论文摘要
公共交通在人们的日常生活中起着至关重要的作用。事实证明,公共交通在环境上比任何其他形式的旅行更为可持续,高效和经济。但是,由于运输网络的扩大和更复杂的旅行情况的扩大,人们在有效地通过公共交通系统从一个地方到另一个地方的最喜欢的路线遇到困难。为此,在本文中,我们提出了Polestar,这是一种用于智能有效公共交通路线的数据驱动引擎。具体来说,我们首先提出了一个新颖的公共交通图(PTG),以根据各种旅行成本(例如时间或距离)对公共交通系统进行建模。然后,我们引入了一种通用路线搜索算法,该算法与有效的站点结合方法结合了有效的路线候选方法。之后,我们提出了一个两通行的路线候选排名模块,以在动态旅行情况下捕获用户偏好。最后,对两个现实世界数据集的实验证明了Polestar在效率和有效性方面的优势。的确,在2019年初,Polestar已部署在世界上最大的地图服务之一的百度地图上。迄今为止,Polestar正在为超过330个城市提供服务,每天有100万次查询,并实现了用户点击率的大幅改善。
Public transportation plays a critical role in people's daily life. It has been proven that public transportation is more environmentally sustainable, efficient, and economical than any other forms of travel. However, due to the increasing expansion of transportation networks and more complex travel situations, people are having difficulties in efficiently finding the most preferred route from one place to another through public transportation systems. To this end, in this paper, we present Polestar, a data-driven engine for intelligent and efficient public transportation routing. Specifically, we first propose a novel Public Transportation Graph (PTG) to model public transportation system in terms of various travel costs, such as time or distance. Then, we introduce a general route search algorithm coupled with an efficient station binding method for efficient route candidate generation. After that, we propose a two-pass route candidate ranking module to capture user preferences under dynamic travel situations. Finally, experiments on two real-world data sets demonstrate the advantages of Polestar in terms of both efficiency and effectiveness. Indeed, in early 2019, Polestar has been deployed on Baidu Maps, one of the world's largest map services. To date, Polestar is servicing over 330 cities, answers over a hundred millions of queries each day, and achieves substantial improvement of user click ratio.