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Parallel Approach for Finding Co-location Pattern – A Map Reduce Framework

机译:查找共处一地模式的并行方法– Map Reduce框架

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Spatial co-location pattern mining is a sub field of data mining which is used to discover interesting patterns which are expressed as co-location rules. The objects that are frequently located in certain region are expressed as spatial co-locations. It presents a challenge for finding co-location patterns as the traditional data is considered discrete whereas the spatial objects are embedded in a continuous space. For this a join-less approach is proposed, but as the data size increases, a large amount of computation time is devoted to find co-location rules as the approach is purely sequential. We propose a parallelized join-less approach which finds the spatial neighbor relationship in order to identify co-location instances and co-location rules. The proposed work decreases the computation time drastically as it uses a Map-Reduce framework. This paper presents precise and completeness of the new approach. Finally, an experimental evaluations using synthetic data sets show the algorithm is computationally more efficient.
机译:空间共置模式挖掘是数据挖掘的一个子领域,用于发现有趣的模式,这些模式被表达为共置规则。经常位于某些区域中的对象被表示为空间共置。由于传统数据被认为是离散的,而空间对象却被嵌入连续的空间中,因此这对于寻找共址模式提出了挑战。为此,提出了一种无连接方法,但是随着数据大小的增加,由于该方法是纯粹顺序的,因此需要大量的计算时间来查找共置规则。我们提出了一种并行的无连接方法,该方法可以找到空间邻居关系,以识别共置实例和共置规则。拟议的工作使用Map-Reduce框架,大大减少了计算时间。本文介绍了新方法的精确性和完整性。最后,使用综合数据集进行的实验评估表明该算法在计算上更有效。

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