Performance simulations for categorical mediation: Analyzing khb estimates of mediation in ordinal regression models
E. Keith Smith (),
Michael G. Lacy () and
Adam Mayer ()
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E. Keith Smith: GESIS-Leibniz Institute for the Social Sciences
Michael G. Lacy: Colorado State University
Adam Mayer: Colorado State University
Stata Journal, 2019, vol. 19, issue 4, 913-930
Abstract:
Standard mediation techniques for fitting mediation models cannot readily be translated to nonlinear regression models because of scaling issues. Methods to assess mediation in regression models with categorical and limited response variables have expanded in recent years, and these techniques vary in their approach and versatility. The recently developed khb technique purports to solve the scaling problem and produce valid estimates across a range of nonlinear regression models. Prior studies demonstrate that khb performs well in binary logistic regression models, but performance in other models has yet to be inves- tigated. In this article, we evaluate khb’s performance in fitting ordinal logistic regression models as an exemplar of the wider set of models to which it applies. We examined performance across 38,400 experimental conditions involving sample size, number of response categories, distribution of variables, and amount of medi- ation. Results indicate that under all experimental conditions, khb estimates the difference (mediation) coefficient and its associated standard error with little bias and that the nominal confidence interval coverage closely matches the actual. Our results suggest that researchers using khb can assume that the routine reasonably approximates population parameters.
Keywords: khb; performance simulation; mediation; ordinal logistic regression (search for similar items in EconPapers)
Date: 2019
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Persistent link: https://EconPapers.repec.org/RePEc:tsj:stataj:v:19:y:2019:i:4:p:913-930
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DOI: 10.1177/1536867X19893638
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