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I am trying to calculate the necessary sample size for a 2x2 factorial design. I have two questions.

1) I am using the package pwr and the one way anova function to calculate the necessary sample size using the following code

pwr.anova.test(k = , n = , f = , sig.level = , power = )

However, I would like to look at two way anova, since this is more efficient at estimating group means than one way anova. There is no two-way anova function that I could find. Is there a package or routine in [R] to do this?

2) Moreover, am I safe in assuming that since I am using a one-way anova power calculations, that the sample size will be more conservative (i.e. larger)?

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closed as off topic by Dirk Eddelbuettel, Shane, hadley, rcs, Graviton Apr 27 '10 at 1:46

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This is not programming related, but you should go vote for Rob Hyndman's site proposal here: meta.stackexchange.com/questions/5547/…. –  Shane Apr 26 '10 at 1:16

2 Answers 2

In a 2 x 2 ANOVA involving Factor A, Factor B, and AxB, you will get separate statistical power estimates for each of these three effects.

G Power 3 provides free software and some clear tutorials for estimating power of effects in factorial designs: http://www.psycho.uni-duesseldorf.de/abteilungen/aap/gpower3/user-guide-by-design

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"Separate" for balanced designs :) –  Stéphane Laurent Jul 16 '13 at 13:48

After searching - I couldn't find any solution for this online.

What I would suggest you to do (if you know how) is to program this using a simulation. If you don't know how to do it, then write a SO question about "How can I write a simulation of two-way anova, to achieve power analysis" and see what people might help you with :)

Also, you could start by reviewing the code here:


For a start on power calculation through simulation.

Notice what Jeromy wrote - this power analysis is for multiple outcomes.

Interesting subject - I'd love to followup on it.



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Thanks you two for the input Jeremy and Tal. I will think about your suggestions and how to incorporate them. –  Thomas Apr 27 '10 at 12:07
@Thomas Have you opened another post for your question ? You just need one line in R to compute power of a F-test. Not a good place but here is a function which does the job: Power <- function(alpha, eff, n, m, l) { df1 <- m - l df2 <- n - m c <- qf(1 - alpha, df1, df2) lambda <- eff^2 * n pow <- pf(c, df1, df2, ncp = lambda, lower.tail = FALSE) return(pow) } –  Stéphane Laurent Jul 16 '13 at 20:43

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