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首页> 外文期刊>ISPRS International Journal of Geo-Information >Identifying and Analyzing the Prevalent Regions of a Co-Location Pattern Using Polygons Clustering Approach
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Identifying and Analyzing the Prevalent Regions of a Co-Location Pattern Using Polygons Clustering Approach

机译:使用多边形聚类方法识别和分析同位置模式的流行区域

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Given a co-location pattern consisting of spatial features, the prevalent region mining process identifies local areas in which these features are co-located with a high probability. Many approaches have been proposed for co-location mining due to its key role in public safety, social-economic development and environmental management. However, traditionally, most of the solutions focus on itemsets mining and results outputting in a textual format, which fail to adequately treat all the spatial nature of the underlying entities and processes. In this paper, we propose a new co-location analysis approach to find the prevalent regions of a pattern. The approach combines kernel density estimation and polygons clustering techniques to specifically consider the correlation, heterogeneity and contextual information existing within complex spatial interactions. A kernel density estimation surface is created for each feature and subsequently the generated multiple surfaces are combined into a final surface with cell attribute representing the pattern prevalence measure value. Polygons consisting of cells are then extracted according to the predefined threshold. Through adding appended environmental data to the polygons, an outcome of similar groups is achieved using polygons clustering approach. The effectiveness of our approach is evaluated using Points-of-Interest datasets in Shenzhen, China.
机译:给定一个由空间特征组成的共置模式,普遍的区域挖掘过程会识别出这些特征以高概率共置一地的局部区域。由于异地采矿在公共安全,社会经济发展和环境管理中的关键作用,因此提出了许多方法用于异地采矿。但是,传统上,大多数解决方案都将重点放在项目集的挖掘和以文本格式输出的结果上,这不能充分地处理基础实体和过程的所有空间性质。在本文中,我们提出了一种新的共置位分析方法来查找模式的流行区域。该方法结合了核密度估计和多边形聚类技术,以专门考虑复杂空间交互中存在的相关性,异质性和上下文信息。为每个特征创建一个核密度估计表面,然后将生成的多个表面组合为最终表面,其最终表面具有表示图案普遍性测量值的像元属性。然后根据预定义的阈值提取包含单元格的多边形。通过将附加的环境数据添加到多边形,可以使用多边形聚类方法获得相似组的结果。我们使用中国深圳的兴趣点数据集评估了我们方法的有效性。

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