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Dependence maps: Local dependence in practice

机译:依赖图:实践中的局部依赖

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摘要

There is often more structure in the way two random variables are associated than a single scalar dependence measure, such as correlation, can reflect. Local dependence functions such as that of Holland and Wang (1987) are, therefore, useful. However, it can be argued that estimated local dependence functions convey information that is too detailed to be easily interpretable. We seek to remedy this difficulty, and hence make local dependence a more readily interpretable practical tool, by introducing dependence maps. Via local permutation testing, dependence maps simplify the estimated local dependence structure between two variables by identifying regions of (significant) positive, (not significant) zero and (significant) negative local dependence. When viewed in conjunction with an estimate of the joint density, a comprehensive picture of the joint behaviour of the variables is provided. A little theory, many implementational details and several examples are given.
机译:两个随机变量的关联方式通常比单个标量相关性度量(如相关性)所能反映的结构更多。因此,诸如Holland and Wang(1987)的局部依赖函数是有用的。但是,可以争辩说,估计的局部依赖性函数所传递的信息过于详细,以至于无法轻易解释。我们试图弥补这一困难,并通过引入依赖图使局部依赖成为更容易解释的实用工具。通过局部置换测试,依赖关系图通过识别(显着)正,(不显着)零和(显着)负局部依赖的区域来简化两个变量之间的估计局部依赖结构。当与关节密度的估计一起查看时,将提供变量关节行为的全面描述。给出了一些理论,许多实现细节和几个示例。

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