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Next-cell Prediction Based on Cell Sequence History and Intra-cell Trajectory

机译:基于细胞序列历史和细胞内轨迹的下一细胞预测

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In this work, we study a novel mobility prediction algorithm based on past long-term and short-term trajectories of users. In particular, we perceive the regularity of users' movements by training a Markov Renewal Process (MRP) using the long-term trajectory history. Moreover, short-term trajectory data, recorded within the current residing cell, is utilized to incorporate possible randomness of users' behavior into the algorithm. In fact, each neighboring cell is assigned two distinct probabilities of being chosen as next crossing cell, one given by MRP, while another is obtained from the direction of movements across the current cell. Lastly, assigned probabilities, i.e. the pieces of information extracted from the two aforementioned trajectory data sets, are combined with the aid of Dempster-Shafer theory to reach the best possible decision about the future crossing cell. Simulation results illustrate that the algorithm reliably predicts the next crossing cell with around 70% accuracy.
机译:在这项工作中,我们研究了一种基于用户过去长期和短期轨迹的新颖的移动性预测算法。特别是,我们通过使用长期轨迹历史训练Markov更新过程(MRP)来感知用户动作的规律性。而且,记录在当前居住单元内的短期轨迹数据被用于将用户行为的可能随机性合并到算法中。实际上,每个相邻小区都被分配了两个不同的概率,它们被选作下一个交叉小区,一个由MRP给出,而另一个则是从当前小区的移动方向获得的。最后,借助Dempster-Shafer理论将分配的概率(即,从上述两个轨迹数据集中提取的信息片段)组合起来,以得出关于未来穿越小区的最佳决策。仿真结果表明,该算法以约70%的准确度可靠地预测了下一个交叉单元。

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