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DynMDL: A Parallel Trajectory Segmentation Algorithm

机译:DYNMDL:一个并行轨迹分割算法

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The purpose of trajectory segmentation algorithms is to replace an input trajectory by a sub-trajectory with fewer points than the input, but that is also a good approximation to the original trajectory. As such, trajectory segmentation is an essential pre-processing step for trajectory mining algorithms, such as clustering. Among the segmentation strategies that are commonly used for trajectory clustering is Minimum Description Length (MDL)-based segmentation, which consists in finding a sub-trajectory such that the sum of its distance to the input trajectory and its overall length is minimum. However, there are no efficient algorithms for optimal MDL-based segmentation; there are only approximate algorithms. In this work we fill this gap by proposing a parallel multicore algorithm for MDL-based trajectory segmentation. We use three real-life datasets to show that our algorithm achieves optimal MDL, and compare its performance against Traclus, the state-of-the-art approximate Description Length (DL) segmentation algorithm.
机译:的轨迹分割算法的目的是要取代由一个子轨道以比输入点较少的输入轨迹,但是这也是一个好的近似为原始轨迹。这样,轨迹分割为轨迹挖掘算法,如集群的重要预处理步骤。中通常使用的用于轨迹聚类的分割策略是最小描述长度(MDL)基分割,它由在找到一个子轨道,使得其对输入的轨迹的距离和其总长度的总和是最小的。但是,也有最佳基于MDL-分割没有有效的算法;只有近似算法。在这项工作中,我们填补提出了基于MDL-轨迹分割并行多核算法,这种差距。我们使用三种现实生活中的数据集,以显示我们的算法达到最佳MDL,并比较其对Traclus,国家的最先进的近似描述长度(DL)分割算法的性能。

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