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首页> 外文期刊>Information Sciences: An International Journal >Detecting nominal variables' spatial associations using conditional probabilities of neighboring surface objects' categories
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Detecting nominal variables' spatial associations using conditional probabilities of neighboring surface objects' categories

机译:使用邻近表面对象类别的条件概率检测名义变量的空间关联

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摘要

How to automatically mining the spatial association patterns in spatial data is a challenging task in spatial data mining. In this paper, we propose three indices that represent the per-class, inter-class, and overall spatial associations of a nominal variable, which are based on the conditional probabilities of surface object categories. These indices represent relative quantities and are normalized to the region [-1, 1], which more accord with the intuitive cognition of people. We present some algorithms for detecting spatial associations that are based on these indices. The proposed method can be regarded as an extension of join count statistics and Transiogram. Several constructive examples were used to illustrate the advantages of the new method. Using two real data sets, vegetation types in Qingxian, Shanxi, China and neural tube birth defects in Heshun, Shanxi, China, we ran comparative experiments with other commonly used methods, including join count statistics, co-location quotient, and Q(m) statistics. The experimental results show that the proposed method can detect more subtle spatial associations, and is not sensitive to the sequence of neighbors. (C) 2015 Elsevier Inc. All rights reserved.
机译:在空间数据挖掘中,如何自动挖掘空间数据中的空间关联模式是一项艰巨的任务。在本文中,我们基于表面对象类别的条件概率,提出了三个代表名义变量的每个类别,类别间和整体空间关联的指数。这些指数代表相对数量,并被归一化为区域[-1,1],这更符合人们的直观认知。我们提出了一些基于这些索引的用于检测空间关联的算法。所提出的方法可以看作是连接计数统计和Transiogram的扩展。几个建设性的例子用来说明新方法的优点。利用两个真实的数据集,即中国山西青县的植被类型和中国山西和顺的神经管先天缺陷,我们与其他常用方法进行了比较实验,包括连接数统计,同位商和Q(m)。 )统计信息。实验结果表明,该方法可以检测到更精细的空间关联,并且对相邻序列不敏感。 (C)2015 Elsevier Inc.保留所有权利。

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