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Discovering Spatially Contiguous Clusters in Multivariate Geostatistical Data Through Spectral Clustering

机译:通过光谱聚类发现多元地统计数据中的空间连续聚类

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Spectral clustering has recently become one of the most popular modern clustering algorithms for traditional data. However, the application of this clustering method on geostatistical data produces spatially scattered clusters, which is undesirable for many geoscience applications. In this work, we develop a spectral clustering method aimed to discover spatially contiguous and meaningful clusters in multivariate geostatistical data, in which spatial dependence plays an important role. The proposed spectral clustering method relies on a similarity measure built from a non-parametric kernel estimator of the multivariate spatial dependence structure of the data, emphasizing the spatial correlation among data locations. The capability of the proposed spectral clustering method to provide spatially contiguous and meaningful clusters is illustrated using the European Geological Surveys Geochemical database.
机译:频谱聚类最近已成为最流行的传统数据现代聚类算法之一。但是,将这种聚类方法应用于地统计数据会产生空间分散的聚类,这对于许多地球科学应用而言都是不希望的。在这项工作中,我们开发了一种频谱聚类方法,旨在发现多元地统计数据中空间连续且有意义的聚类,其中空间依赖性起着重要作用。所提出的频谱聚类方法依赖于从数据的多元空间相关性结构的非参数核估计器构建的相似性度量,着重于数据位置之间的空间相关性。使用欧洲地质调查地球化学数据库说明了所提出的光谱聚类方法提供空间上连续且有意义的聚类的能力。

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