Publication | Closed Access
Negative Consequences of Dichotomizing Continuous Predictor Variables
425
Citations
11
References
2003
Year
Marketing AnalyticsCustomer SatisfactionNormal Predictor VariablesBehavioral Decision MakingConsumer StudyConsumer ResearchSocial SciencesPsychologyBiasManagementCognitive Bias MitigationDecision TheoryContinuous Predictor VariablesSelection BiasMarketing TheoryMarketingBusinessMarketing ManagementMedian Split
Marketing researchers frequently split (dichotomize) continuous predictor variables into two groups, as with a median split, before performing data analysis. The practice is prevalent, but its effects are not well understood. In this article, the authors present historical results on the effects of dichotomization of normal predictor variables rederived in a regression context that may be more relevant to marketing researchers. The authors then present new results on the effect of dichotomizing continuous predictor variables with various nonnormal distributions and examine the effects of dichotomization on model specification and fit in multiple regression. The authors conclude that dichotomization has only negative consequences and should be avoided.
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