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Discovering both Positive and Negative Co-location Rules from Spatial Data Sets

机译:从空间数据集中发现正极和负面的共同定位规则

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With the explosive growth and extensive applications of spatial data sets, it is becoming more and more important to solve the problem how to discover knowledge automatically from spatial data sets. Co-location patterns discovery is an important branch in spatial data mining. Traditional algorithms for co-location patterns mining can only find positive co-location patterns. However, negative co-location patterns, which are strong negative associated but whose participation index are less than a minimum prevalence threshold, sometimes would include great valuable information. In this paper, the concept of the negative co-location patterns is defined. Based on the analysis of the relationship between negative and positive participation index, methods for negative participation index calculation and negative patterns pruning strategies are given. The methods make it possible to discover both positive and negative co-locations efficiently. The applications of the proposed algorithm are studied using the plant data sets of the "Three Parallel Rivers of Yunnan Protected Areas". Finally, an extensive experimental analysis is done to show the effectiveness and efficiency of the algorithms.
机译:随着爆炸式增长和空间数据集的应用领域广泛,它正变得越来越重要,解决如何从空间数据集自动发现知识的问题。一地两检模式的发现是在空间数据挖掘中的一个重要分支。协同定位模式挖掘传统算法只能找到积极的协同定位模式。然而,负协同定位模式,这是强烈的负相关,但其参与指数都小于最小患病门槛,有时会包括很大的有价值的信息。在本文中,所述负协同定位模式的概念被定义。基于负和正参与指数之间的关系的分析,为负的参与指数计算和修剪策略负图案的方法中给出。该方法能够有效地发现正反两方面的共同位置。该算法的应用程序正在使用“三江并流”的工厂数据集研究。最后,大量的实验分析做是为了显示该算法的有效性和效率。

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