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Web-Based Cluster Analysis for the Time-Series Signature of Local Spatial Association

机译:基于Web的局部空间关联时间序列签名的聚类分析

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We propose a method for modeling the time-series of local spatial association in geographical phenomena and implement a Web-based statistical GIS for the time-series analysis using client-provided dataset. In order to examine the pattern of time-series and classify similar ones on a cluster basis, we employ Moran scatterplot and extend it to time-series Moran scatterplot accumulated over a certain span of time. Using the time-series Moran scatterplot, we develop similarity measures of "state sequence" and "clustering transition" for the time-series of local spatial association. If we connect n corresponding points of a region on the time-series Moran scatterplot, the connected line composed of n nodes and n-1 edges forms a time-series signature of local spatial association for the region. From the similarity matrix of the time-series signatures, we generate a map of the clustered classification of changing regions. These analytical functionalities of cluster analysis on the time-series of local spatial association are implemented in a Web-based GIS using XML Web Services.
机译:我们提出了一种在地理现象中建模本地空间关联的时间序列的方法,并使用客户端提供的数据集实现了基于Web的统计GIS来进行时间序列分析。为了检查时间序列的模式并基于聚类对相似序列进行分类,我们使用Moran散点图并将其扩展到在一定时间范围内累积的时间序列Moran散点图。使用时间序列Moran散点图,我们针对局部空间关联的时间序列开发了“状态序列”和“聚类转换”的相似性度量。如果我们在时间序列Moran散点图上连接区域的n个对应点,则由n个节点和n-1个边组成的连接线会形成该区域的局部空间关联的时间序列签名。从时间序列签名的相似性矩阵,我们生成了变化区域的聚类分类图。这些对局部空间关联的时间序列进行聚类分析的分析功能是使用XML Web Services在基于Web的GIS中实现的。

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