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PartSpan: Parallel Sequence Mining of Trajectory Patterns

机译:PartSpan:轨迹模式的并行序列挖掘

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摘要

The trajectory pattern mining problem has recently attracted increasing attention. This paper precisely addresses the parallel mining problem of trajectory patterns as well as the newly proposed concepts with regard to trajectory pattern mining. An efficient Parallel trajectory Sequential pattern mining (PartSpan) is proposed by incorporating three key techniques: prefix-projection, parallel formulation, and candidate pruning. The prefix-projection technique is used to decompose the search space as well as greatly reducing candidate trajectory sequences. The parallel formulation integrates the data parallel formulation and the task parallel formulation to partition the computations and to assign them to multiple processors in an efficient and effective manner that helps reduce the communication cost across processors. Representative experiments are used to evaluate the performance of PartSpan. The results show that PartSpan outperforms GSP-based and SPADE-based parallel algorithms in mining very large trajectory databases.
机译:轨迹模式挖掘问题最近引起了越来越多的关注。本文精确地解决了轨迹模式的并行挖掘问题以及关于轨迹模式挖掘的新提出的概念。通过结合三种关键技术,提出了一种有效的并行轨迹顺序模式挖掘(PartSpan):前缀投影,并行公式化和候选修剪。前缀投影技术用于分解搜索空间以及大大减少候选轨迹序列。并行表述将数据并行表述和任务并行表述集成在一起,以划分计算并将它们以有效且有效的方式分配给多个处理器,这有助于降低跨处理器的通信成本。代表性实验用于评估PartSpan的性能。结果表明,在挖掘非常大的轨迹数据库中,PartSpan优于基于GSP和基于SPADE的并行算法。

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