基于最优性考虑的路径目标预测

J. Roth
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引用次数: 6

摘要

在本文中,我们提出了一种预测移动用户在移动中的目标的方法。在从起点观察运动之后,我们能够创建可能的路线外推。我们的基本假设是:移动用户试图高效移动,因此只有特定的目的地是合理的。我们使用包含移动成本信息的道路网络来检测合理的移动,但我们不期望理论上的最优路径。我们能够模拟不同的效率目标和不同程度的最优性。我们提出了一种有效的算法来实际计算一组合理的目标,避免了蛮力计算。与现有的预测路线目的地的工作相比,我们不需要一个学习阶段来收集以前路线的存档。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting route targets based on optimality considerations
In this paper we present an approach to predict a target of a mobile user on the move. After observing the movement from a starting point, we are able to create possible extrapolations of routes. Our basic assumption: a mobile user tries to move efficiently, thus only a certain set of destinations is reasonable. We use a road network that contains information about movement costs to detect reasonable movements, but we do not expect theoretical optimal paths. We are able to model different efficiency goals and different degrees of optimality. We present an efficient algorithm to actually compute the set of reasonable targets that avoids brute force computation. In contrast to existing work to predict route destinations, we do not require a learning phase to collect an archive of former routes.
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