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首页> 外文期刊>Multivariate behavioral research >On the misconception of multicollinearity in detection of moderating effects: Multicollinearity is not always detrimental
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On the misconception of multicollinearity in detection of moderating effects: Multicollinearity is not always detrimental

机译:关于在检测调节效果时对多重共线性的误解:多重共线性并不总是有害的

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摘要

Due to its extensive applicability and computational ease, moderated multiple regression (MMR) has been widely employed to analyze interaction effects between 2 continuous predictor variables. Accordingly, considerable attention has been drawn toward the supposed multicollinearity problem between predictor variables and their cross-product term. This article attempts to clarify the misconception of multicollinearity in MMR studies. The counterintuitive yet beneficial effects of multicollinearity on the ability to detect moderator relationships are explored. Comprehensive treatments and numerical investigations are presented for the simplest interaction model and more complex three-predictor setting. The results provide critical insight that both helps avoid misleading interpretations and yields better understanding for the impact of intercorrelation among predictor variables in MMR analyses.
机译:由于其广泛的适用性和计算的简便性,中度多元回归(MMR)已被广泛用于分析2个连续预测变量之间的相互作用。因此,人们对预测变量及其叉积项之间的多重共线性问题引起了极大的关注。本文试图澄清MMR研究中多重共线性的误解。探索了多重共线性对检测主持人关系的能力的违反直觉但有益的影响。针对最简单的交互模型和更复杂的三变量设置,提供了综合处理和数值研究。结果提供了关键的见解,既可以帮助避免产生误导性的解释,也可以更好地理解MMR分析中预测变量之间的相互关系。

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