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Horizontally scalable probabilistic generalized suffix tree (PGST) based route prediction using map data and GPS traces

机译:使用地图数据和GPS轨迹的基于水平可扩展概率广义后缀树(PGST)的路线预测

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Route prediction is an essential requirement for many intelligent transport systems (ITS) services like VANETS, traffic congestion estimation, resource prediction in grid computing etc. This work focuses on building an end-to-end horizontally scalable route prediction application based on statistical modeling of user travel data. Probabilistic suffix tree (PST) is one of widely used sequence indexing technique which serves a model for prediction. The probabilistic generalized suffix tree (PGST) is a variant of PST and is essentially a suffix tree built from a huge number of smaller sequences. We construct generalized suffix tree model from a large number of trips completed by the users. User trip raw GPS traces is mapped to the digitized road network by parallelizing map matching technique leveraging map reduce framework. PGST construction from the huge volume of data by processing sequentially is a bottleneck in the practical realization. Most of the existing works focused on time-space tradeoffs on a single machine. Proposed technique solves this problem by a two-step process which is intuitive to execute in the map-reduce framework. In the first step, computes all the suffixes along with their frequency of occurrences and in the second step, builds probabilistic generalized suffix tree. The probabilistic aspect of the tree is also taken care so that it can be used as a model for prediction application. Dataset used are road network spatial data and GPS traces of users. Experiments carried out on real datasets available in public domain.
机译:路线预测是许多智能运输系统(ITS)服务(如VANETS,交通拥堵估计,网格计算中的资源预测等)的基本要求。这项工作着重于基于统计模型的端到端水平可扩展路线预测应用程序的构建用户旅行数据。概率后缀树(PST)是广泛使用的序列索引技术之一,可为预测提供模型。概率广义后缀树(PGST)是PST的一种变体,本质上是由大量较小序列构成的后缀树。我们从用户完成的大量行程中构建广义后缀树模型。利用地图缩小框架,通过并行化地图匹配技术,将用户旅行的原始GPS轨迹映射到数字化道路网络。通过顺序处理从海量数据中构建PGST是实际实现中的瓶颈。现有的大多数工作都集中在一台机器上进行时空权衡。所提出的技术通过两步过程解决了这个问题,该过程很直观,可以在map-reduce框架中执行。第一步,计算所有后缀及其出现的频率,第二步,建立概率广义后缀树。还注意树的概率方面,以便可以将其用作预测应用程序的模型。使用的数据集是道路网络空间数据和用户的GPS轨迹。对公共领域中可用的真实数据集进行了实验。

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