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Chain Reversion for Detecting Associations in Interacting Variables—St. Nicolas House Analysis

机译:用于检测交互变量的关联的链升降。 Nicolas House分析

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摘要

(1) Background: We present a new statistical approach labeled as “St. Nicolas House Analysis” (SNHA) for detecting and visualizing extensive interactions among variables. (2) Method: We rank absolute bivariate correlation coefficients in descending order according to magnitude and create hierarchic “association chains” defined by sequences where reversing start and end point does not alter the ordering of elements. Association chains are used to characterize dependence structures of interacting variables by a graph. (3) Results: SNHA depicts association chains in highly, but also in weakly correlated data, and is robust towards spurious accidental associations. Overlapping association chains can be visualized as network graphs. Between independent variables significantly fewer associations are detected compared to standard correlation or linear model-based approaches. (4) Conclusion: We propose reversible association chains as a principle to detect dependencies among variables. The proposed method can be conceptualized as a non-parametric statistical method. It is especially suited for secondary data analysis as only aggregate information such as correlations matrices are required. The analysis provides an initial approach for clarifying potential associations that may be subject to subsequent hypothesis testing.
机译:(1)背景:我们提出了一种标记为“St.”标记为“St.”的新统计方法Nicolas House分析“(SNHA),用于检测和可视化变量之间的广泛交互。 (2)方法:我们根据幅度按降序排列绝对双变量相关系数,并通过序列定义的分层“关联链”,其中反转开始和结束点不会改变元素的排序。关联链用于表征图形相互作用的依赖性结构。 (3)结果:SNHA描绘了高度,也是弱相关性的关联链,对杂散意外协会具有稳健性。重叠的关联链可以可视化为网络图形。与标准相关或基于线性模型的方法相比,检测到独立变量明显较少的关联。 (4)结论:我们提出可逆关联链作为检测变量之间依赖性的原则。该方法可以被概念化为非参数统计方法。特别适用于辅助数据分析,因为只需要相关矩阵等总信息。该分析提供了一种阐明可能受到后续假设检测的潜在关联的初始方法。

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