基于轨迹数据的顺序模式挖掘

E. Masciari, Barzan Mozafari
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引用次数: 16

摘要

在本文中,我们研究了频繁轨迹的挖掘问题,这在许多应用场景中是至关重要的,如车辆交通管理,蜂窝网络中的切换,供应链管理。我们把这个问题看作是挖掘频繁序列模式的问题。我们的方法包括对进入的轨迹流的划分策略,以减少轨迹大小并将轨迹表示为字符串。我们使用滑动窗口方法结合计数算法挖掘频繁轨迹,使我们能够及时更新模式的频率。为了使计数真正有效,我们用质数表示频繁轨迹,这样中国提醒定理就可以用来加快计算速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sequential pattern mining from trajectory data
In this paper, we study the problem of mining for frequent trajectories, which is crucial in many application scenarios, such as vehicle traffic management, hand-off in cellular networks, supply chain management. We approach this problem as that of mining for frequent sequential patterns. Our approach consists of a partitioning strategy for incoming streams of trajectories in order to reduce the trajectory size and represent trajectories as strings. We mine frequent trajectories using a sliding windows approach combined with a counting algorithm that allows us to promptly update the frequency of patterns. In order to make counting really efficient, we represent frequent trajectories by prime numbers, whereby the Chinese reminder theorem can then be used to expedite the computation.
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