A Map-Reduce Framework for Finding Clusters of Colocation Patterns - A Summary of Results

M. Sheshikala, D. Rao, R. Prakash
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引用次数: 11

Abstract

Given an application of a spatial data set, we discover a set of co-location patterns using a GUI (Graphical User Interface) model in a less amount of time, as this application is implemented using a parallel approach-A Map-Reduce framework. This framework uses a grid based approach to find the neighboring paths using a Euclidean distance. The framework also uses a dynamic algorithm in finding the spatial objects and discovers co-location rules from them. Once co-location rules are identified, we give the input as a threshold value which is used to form clusters of similar behavior. If the threshold value is too low more clusters are formed, if it is too high less clusters are formed. The comparison of the results shows that the proposed system is computationally good and gives the co-location patterns in a less amount of time.
一种用于查找托管模式簇的Map-Reduce框架——结果摘要
给定一个空间数据集的应用程序,我们使用GUI(图形用户界面)模型在更短的时间内发现一组共定位模式,因为该应用程序使用并行方法- Map-Reduce框架实现。该框架使用基于网格的方法使用欧几里得距离来查找相邻路径。该框架还采用动态算法查找空间对象,并从中发现共定位规则。一旦确定了共定位规则,我们将输入作为一个阈值,用于形成具有相似行为的簇。阈值设置过低会导致集群数量增加,过高会导致集群数量减少。结果表明,该系统具有较好的计算性能,并能在较短的时间内给出共定位模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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