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I've seen two basic approaches to generic formulas for within-subjects designs in R/aov() (R = random, X = dependent, W? = within, B? = between):

Pure within: 
    X ~ Error(R/W1*W2...)
or  
    X ~ (W1*W2...) + Error(R/(W1*W2...))

Mixed:
    X ~ B1*B2*... + Error(R/W1*W2...)
or  
    X ~ (B1*B2*...W1*W2...) + Error(R/(W1*W2...)+(B1*B2...))

That is, some advise never putting W factors outside the error term or B factors inside, while others put all (B, W) factors outside and inside, indicating in the error term which are nested within R.

Are these simply notational variants? Is there any reason to prefer one to the other as a default for performing ANOVA using aov()?

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1 Answer 1

I would always recommend putting all within-subjects variables inside and outside of the error term.

For pure within-subject analysis this means using the following formula:

X ~ (W1*W2...) + Error(R/(W1*W2...))

Here, all wihin-subjects effects are tested with repect to their appropriate error term.

In contrast, the formula X ~ Error(R/W1*W2...) does not allow you to test the effects of your variables.

The same principle holds for mixed designs (including between- and withins-subject variables). The correct formula is:

X ~ (B1*B2*...W1*W2...) + Error(R/(W1*W2...))

There is no need to use the between-variables twice in the formula. The model above is actually identical to X ~ (B1*B2*...W1*W2...) + Error(R/(W1*W2...)+(B1*B2...)).

This formula allows you to test both between- and within-subject effects with the correct error terms.

For more information, read this ANOVA tutorial.

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