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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Mixed-Drove Spatiotemporal Co-Occurrence Pattern Mining
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Mixed-Drove Spatiotemporal Co-Occurrence Pattern Mining

机译:混合驱动时空共现模式挖掘

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Mixed-drove spatio-temporal co-occurrence patterns (MDCOPs) represent subsets of two or more different object-types whose instances are often located in spatial and temporal proximity. Discovering MDCOPs is an important problem with many applications such as identifying tactics in battlefields, games, and predator-prey interactions. However, mining MDCOPs is computationally very expensive because the interest measures are computationally complex, datasets are larger due to the archival history, and the set of candidate patterns is exponential in the number of object-types. We propose a monotonic composite interest measure for discovering MDCOPs and novel MDCOP mining algorithms. Analytical results show that the proposed algorithms are correct and complete. Experimental results also show that the proposed methods are computationally more efficient than naive alternatives.
机译:混合驱动的时空共现模式(MDCOP)表示两个或多个不同对象类型的子集,其实例通常位于空间和时间上。发现MDCOP是许多应用程序中的重要问题,例如确定战场,游戏中的策略以及食肉动物与猎物的互动。但是,挖掘MDCOP的计算量非常大,因为兴趣度量在计算上很复杂,由于存档历史记录而导致数据集更大,并且候选模式的集合在对象类型的数量上呈指数级。我们提出了用于发现MDCOP和新颖的MDCOP挖掘算法的单调复合兴趣度量。分析结果表明,所提出的算法是正确和完整的。实验结果还表明,所提出的方法在计算上比幼稚的替代方法更有效。

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