Title of article :
Measures of predictor sensitivity for order-insensitive partitioning of multiple correlation
Author/Authors :
Sammy Zahran، نويسنده , , Michael A. Long&Kenneth J. Berry، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Lindeman et al. [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 allp! 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.
Keywords :
Partitioning , Multiple correlation , Relative importance , semi-partial , sensitivity
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS