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Measures of predictor sensitivity for order-insensitive partitioning of multiple correlation

机译:阶相关不敏感分区的预测变量敏感性的度量

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摘要

Lindeman etal. [12] provide a unique solution to the relative importance of correlated predictors in multiple regression by averaging squared semi-partial correlations obtained for each predictor across all p! orderings. In this paper, we propose a series of predictor sensitivity statistics that complement the variance decomposition procedure advanced by Lindeman et al. [12]. First, we detail the logic of averaging over orderings as a technique of variance partitioning. Second, we assess predictors by conditional dominance analysis, a qualitative procedure designed to overcome defects in the Lindeman et al. [12] variance decomposition solution. Third, we introduce a suite of indices to assess the sensitivity of a predictor to model specification, advancing a series of sensitivity-adjusted contribution statistics that allow for more definite quantification of predictor relevance. Fourth, we describe the analytic efficiency of our proposed technique against the Budescu conditional dominance solution to the uneven contribution of predictors across all p orderings.
机译:林德曼(Lindeman)等人。 [12]通过对所有p上每个预测变量获得的平方半偏相关度求平均值,为多元回归中相关预测变量的相对重要性提供了独特的解决方案。订购。在本文中,我们提出了一系列的预测器敏感性统计数据,以补充Lindeman等人提出的方差分解程序。 [12]。首先,我们详细介绍了将平均化顺序作为方差分区技术的逻辑。其次,我们通过条件优势分析评估预测因子,这是一种旨在克服Lindeman等人缺陷的定性方法。 [12]方差分解解。第三,我们引入了一套指标来评估预测变量对模型规范的敏感性,从而推进一系列敏感性调整后的贡献统计量,从而可以更确定地量化预测变量的相关性。第四,我们描述了针对Budescu条件优势解决方案的拟议技术的分析效率,该条件对所有p阶预测变量的不均衡贡献。

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