The impact of ignoring random features of predictor and moderator variables on sample size for precise interval estimation of interaction effects

被引:0
作者
Gwowen Shieh
机构
[1] National Chiao Tung University,Department of Management Science
来源
Behavior Research Methods | 2011年 / 43卷
关键词
Moderation; Precision; Sample size;
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学科分类号
摘要
The influence of the joint distribution of predictor and moderator variables on the identification of interactions has been well described, but the impact on sample size determinations has received rather limited attention within the framework of moderated multiple regression (MMR). This article investigates the deficiency in sample size determinations for precise interval estimation of interaction effects that can result from ignoring the stochastic nature of continuous predictor and moderator variables in MMR. The primary finding of our examinations is that failure to accommodate the distributional properties of regressors can lead to underestimation of the necessary sample size and distortion of the desired interval precision. In order to take account of the randomness of regressor variables, two general and effective procedures for computing sample size estimates are presented. Moreover, corresponding programs are provided to facilitate use of the suggested approaches. This exposition helps to correct drawbacks in the existing techniques and to advance the practice of reporting confidence intervals in MMR analyses.
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页码:1075 / 1084
页数:9
相关论文
共 24 条
  • [1] Aguinis H(1995)Statistical power problems with moderated multiple regression in management research Journal of Management 21 1141-1158
  • [2] Aguinis H(2005)Effect size and power in assessing moderating effects of categorical variables using multiple regression: A 30-year review The Journal of Applied Psychology 90 94-107
  • [3] Beaty JC(1997)Methodological artifacts in moderated multiple regression and their effects on statistical power The Journal of Applied Psychology 82 192-206
  • [4] Boik RJ(1978)The validity of polynomial regression in the random regression model Review of Educational Research 48 511-515
  • [5] Pierce CA(2008)Sample size planning for the squared multiple correlation coefficient: Accuracy in parameter estimation via narrow confidence intervals Multivariate Behavioral Research 43 524-555
  • [6] Aguinis H(2008)Sample size calculation for estimating or testing a nonzero squared multiple correlation coefficient Multivariate Behavioral Research 43 382-410
  • [7] Stone-Romero EF(1989)How appropriate are popular sample size formulas? American Statistician 43 101-105
  • [8] Cramer EM(1993)Statistical difficulties of detecting interactions and moderator effects Psychological Bulletin 114 376-390
  • [9] Appelbaum MI(2006)Programs for problems created by continuous variable distributions in moderated multiple regression Organizational Research Methods 9 554-567
  • [10] Kelley K(1974)A tale of two regressions Journal of the American Statistical Association 69 682-689