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Clustering and Prediction of Mobile User Routes from Cellular Data

机译:蜂窝数据对移动用户路由的聚类和预测

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摘要

Location-awareness and prediction of future locations is an important problem in pervasive and mobile computing. In cellular systems (e.g., GSM) the serving cell is easily available as an indication of the user location, without any additional hardware or network services. With this location data and other context variables we can determine places that are important to the user, such as work and home. We devise online algorithms that learn routes between important locations and predict the next location when the user is moving. We incrementally build clusters of cell sequences to represent physical routes. Predictions are based on destination probabilities derived from these clusters. Other context variables such as the current time can be integrated into the model. We evaluate the model with real location data, and show that it achieves good prediction accuracy with relatively little memory, making the algorithms suitable for online use in mobile environments.
机译:位置感知和对未来位置的预测是普及和移动计算中的重要问题。在蜂窝系统(例如,GSM)中,服务小区可容易地用作用户位置的指示,而无需任何额外的硬件或网络服务。利用此位置数据和其他上下文变量,我们可以确定对用户重要的地点,例如工作和家庭。我们设计了在线算法,可学习重要位置之间的路线并在用户移动时预测下一个位置。我们逐步构建细胞序列簇来代表物理路线。预测基于从这些聚类中得出的目标概率。可以将其他上下文变量(例如当前时间)集成到模型中。我们使用实际位置数据评估该模型,并表明该模型可在相对较少的内存下实现良好的预测准确性,从而使该算法适合在移动环境中在线使用。

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