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It's a bit like when the doctor says "Your blood cell count is 19" and you ask what that means, the doctor says "Bad". It doesn't really matter which one, it's just a verbal way of quantifying the disease. And if you have no idea what that means, you can fall back on an effect size. We must set our moderator levels (-1SD Permissive and +1SD Authoritative) Permissive<-sd () Authoritative<-+sd () Permissive: Parents.C -1.7 score. So what should you do? You should interpret your parameters in the context of what you are investigating. Plot the results of each moderator to help us visualize the results. Similarly, a correlation of 0.1 (which is small) between living near power lines and leukemia would be enormous. In the context of two devices that try to measure the same thing, a correlation of 0.5 in incredibly low. But if you wrote "The correlation of the scores of the two blood pressure meters was calculated and found to be 0.5, which is large", you would (hopefully) be laughed at. A correlation of 0.5 is a large effect size. You are making the mistake of reifying these interpretations into something more meaningful. How can this make sense? Because Cohen said "This is the sort of small effect size that I see in multiple regression - an f^2 of 0.02 (which is an R^2 of about 0.02) and this is the sort of small effect size that I see in correlation - an r of 0.1. But an f^2 of 0.02 is a small effect size. But a correlation of 0.01, in a regression with one predictor, leads to an f^2 of 0.01. These effect sizes, like f^2 (which is a transformation of R^2), and r (the correlation) are designed to help interpretation when you don't know what else you're doing.Ī correlation of 0.1 is a small correlation. To get around this problem, there are standardized effect sizes, and Cohen gave some rough guidelines, based on his experience, for the sort of effect size you would expect in social and behavioral sciences (I forget, he might have just said behavioral). "A one unit change Log beta-interferon level was associated with a 4 point drop in PTSD score on the PCL" (I made that up), I don't know what a log beta interferon level is, and I don't know what a 4 point drop on the PCL means. Sometimes the parameters are not so interpretable. We know what it means to be male or female, and we know what inches are. Sometimes that's easy "Males were 4 inches taller than women". When you do a statistical analysis, you get a parameter.