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Predicting User Locations and Trajectories

机译:预测用户位置和轨迹

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摘要

Location-based services usually recommend new locations based on the user's current location or a given destination. However, human mobility involves to a large extent routine behavior and visits to already visited locations. In this paper, we show how daily and weekly routines can be modeled with basic prediction techniques. We compare the methods based on their performance, entropy and correlation measures. Further, we discuss how location prediction for everyday activities can be used for personalization techniques, such as timely or delayed recommendations.
机译:基于位置的服务通常推荐基于用户当前位置或给定目的地的新位置。然而,人类流动涉及在很大程度上涉及常规行为并访问已经访问的位置。在本文中,我们展示了日常和每周例程如何用基本预测技术进行建模。我们根据其性能,熵和相关措施进行比较方法。此外,我们讨论如何用于各个活动的位置预测可以用于个性化技术,例如及时或延迟的建议。

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