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Variance Inflation Factor: As a Condition for the Inclusion of Suppressor Variable(s) in Regression Analysis 被引量:12

Variance Inflation Factor: As a Condition for the Inclusion of Suppressor Variable(s) in Regression Analysis
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摘要 Suppression effect in multiple regression analysis may be more common in research than what is currently recognized. We have reviewed several literatures of interest which treats the concept and types of suppressor variables. Also, we have highlighted systematic ways to identify suppression effect in multiple regressions using statistics such as: R2, sum of squares, regression weight and comparing zero-order correlations with Variance Inflation Factor (VIF) respectively. We also establish that suppression effect is a function of multicollinearity;however, a suppressor variable should only be allowed in a regression analysis if its VIF is less than five (5). Suppression effect in multiple regression analysis may be more common in research than what is currently recognized. We have reviewed several literatures of interest which treats the concept and types of suppressor variables. Also, we have highlighted systematic ways to identify suppression effect in multiple regressions using statistics such as: R2, sum of squares, regression weight and comparing zero-order correlations with Variance Inflation Factor (VIF) respectively. We also establish that suppression effect is a function of multicollinearity;however, a suppressor variable should only be allowed in a regression analysis if its VIF is less than five (5).
出处 《Open Journal of Statistics》 2015年第7期754-767,共14页 统计学期刊(英文)
关键词 Suppression Effect MULTICOLLINEARITY Variance INFLATION Factor (VIF) Regression and Correlation STEPWISE Selection Suppression Effect Multicollinearity Variance Inflation Factor (VIF) Regression and Correlation Stepwise Selection
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