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Correlation study of time-varying multivariate climate data sets

机译:时变多元气候数据集的相关性研究

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We present a correlation study of time-varying multivariate volumetric data sets. In most scientific disciplines, to test hypotheses and discover insights, scientists are interested in looking for connections among different variables, or among different spatial locations within a data field. In response, we propose a suite of techniques to analyze the correlations in time-varying multivariate data. Various temporal curves are utilized to organize the data and capture the temporal behaviors. To reveal patterns and find connections, we perform data clustering and segmentation using the k-means clustering and graph partitioning algorithms. We study the correlation structure of a single or a pair of variables using pointwise correlation coefficients and canonical correlation analysis. We demonstrate our approach using results on time-varying multivariate climate data sets.
机译:我们提出了时变多元体积数据集的相关性研究。在大多数科学学科中,为了检验假设并发现见解,科学家有兴趣寻找数据变量内不同变量之间或不同空间位置之间的联系。作为回应,我们提出了一套技术来分析时变多元数据中的相关性。利用各种时间曲线来组织数据并捕获时间行为。为了揭示模式并找到连接,我们使用k-means聚类和图分区算法执行数据聚类和分段。我们使用逐点相关系数和规范相关分析研究单个或一对变量的相关结构。我们使用时变多元气候数据集的结果来证明我们的方法。

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