Calculating the correct parameters for fisher's test power function in R [closed]

I'm trying to calculate the power of Fisher's exact test in R for a 2x2 contingency table. But not sure I'm using the correct paramenters. Could anyone have a look at my logic below and tell me if this is the correct approach?

The R function used (in `statmod`):

``````power.fisher.test(p1, p2, n1, n2, alpha=0.05, nsim=100, alternative="two.sided")
``````

`p1` - ﬁrst proportion to be compared.

`p2` - second proportion to be compared.

`n1` - ﬁrst sample size.

`n2` - second sample size

My example contingency table:

``````     Yes|No

Team1 a | b

Team2 c | d
``````

The way I calculate proportions and sample sizes for the contingency table above. Are these correct? Or do I need to make any amendments?

``````p1=a/(a+c)

p2=b/(b+d)

n1=a+c
n2=b+d
``````
-

closed as off topic by Roman Luštrik, djechlin, Linger, Matthew Pirocchi, RivieraKidDec 6 '12 at 18:00

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Relates more to statistics than programming. I think it would attain a greater audience at crossvalidated.com. –  Roman Luštrik Dec 6 '12 at 14:26
Thanks Roman, shall I move it? (is there any way to do this?) –  MA81 Dec 6 '12 at 17:29

``````p1 = a/(a + b)