Statistical Control in Correlational Studies: 10 Essential Recommendations for Organizational Researchers
Document Type
Article
Publication Date
2-2016
Keywords
statistical control, research methods, correlational studies
Digital Object Identifier (DOI)
https://doi.org/10.1002/job.2053
Abstract
Statistical control is widely used in correlational studies with the intent of providing more accurate estimates of relationships among variables, more conservative tests of hypotheses, or ruling out alternative explanations for empirical findings. However, the use of control variables can produce uninterpretable parameter estimates, erroneous inferences, irreplicable results, and other barriers to scientific progress. As a result, methodologists have provided a great deal of advice regarding the use of statistical control, to the point that researchers might have difficulties sifting through and prioritizing the available suggestions. We integrate and condense this literature into a set of 10 essential recommendations that are generally applicable and which, if followed, would substantially enhance the quality of published organizational research. We provide explanations, qualifications, and examples following each recommendation.
Was this content written or created while at USF?
Yes
Citation / Publisher Attribution
Journal of Organizational Behavior, v. 37, issue 2, p. 157-167
Scholar Commons Citation
Becker, Thomas E.; Atinc, Guclu; Breaugh, James A.; Carlson, Kevin D.; Edwards, Jeffrey R.; and Spector, Paul E., "Statistical Control in Correlational Studies: 10 Essential Recommendations for Organizational Researchers" (2016). School of Information Systems and Management Sarasota Manatee Campus Faculty Publications. 150.
https://digitalcommons.usf.edu/qmb_facpub_sm/150