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NextPlace: A Spatio-temporal Prediction Framework for Pervasive Systems

机译:NextPlace:普适系统的时空预测框架

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Accurate and fine-grained prediction of future user location and geographical profile has interesting and promising applications including targeted content service, advertisement dissemination for mobile users, and recreational social networking tools for smart-phones. Existing techniques based on linear and probabilistic models are not able to provide accurate prediction of the location patterns from a spatio-temporal perspective, especially for long-term estimation. More specifically, they are able to only forecast the next location of a user, but not his/her arrival time and residence time, i.e., the interval of time spent in that location. Moreover, these techniques are often based on prediction models that are not able to extend predictions further in the future. In this paper we present NextPlace, a novel approach to location prediction based on nonlinear time series analysis of the arrival and residence times of users in relevant places. NextPlace focuses on the predictability of single users when they visit their most important places, rather than on the transitions between different locations. We report about our evaluation using four different datasets and we compare our forecasting results to those obtained by means of the prediction techniques proposed in the literature. We show how we achieve higher performance compared to other predictors and also more stability over time, with an overall prediction precision of up to 90% and a performance increment of at least 50% with respect to the state of the art.
机译:准确和细粒度的未来用户位置和地理分布图预测具有有趣而有前途的应用程序,包括目标内容服务,面向移动用户的广告分发以及用于智能手机的休闲社交网络工具。现有的基于线性和概率模型的技术无法从时空的角度提供位置模式的准确预测,尤其是对于长期估计而言。更具体地说,他们只能预测用户的下一个位置,而不能预测他/她的到达时间和停留时间,即在该位置花费的时间间隔。此外,这些技术通常基于无法在将来进一步扩展预测的预测模型。在本文中,我们介绍了NextPlace,这是一种基于非线性时间序列分析的用户在相关位置到达和停留时间的位置预测新方法。 NextPlace着重于单个用户访问其最重要位置时的可预测性,而不是不同位置之间的转换。我们使用四个不同的数据集报告评估结果,并将我们的预测结果与通过文献中提出的预测技术获得的结果进行比较。我们展示了与其他预测变量相比,我们如何实现更高的性能,以及随着时间的推移具有更高的稳定性,相对于现有技术,总体预测精度高达90%,性能增量至少为50%。

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