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For my repeated measures analysis using lme function I could omit not-available (na) data with the command: na.action=na.omit.

anova_lme_loc<-lme(data=rm1, fixed=Nmin~location*date, random=~1|subject,
                   na.action=na.omit)

However, when I try to do the same using the ezANOVA function I got the following notification:

anova_ez_loc=ezANOVA(data=rm1, dv=Nmin, wid=subject, within=date, 
                     between=location, na.action=na.omit)

Error in ezANOVA(data = rm1, dv = Nmin, wid = subject, within = date, : unused argument(s) (na.action = na.omit)

how can I omit my na data in ezANOVA? - solved using:

rm1_na <- na.omit(rm1)

but now I get the following error:

anova_ez_loc=ezANOVA(data=rm1_na, dv=Nmin, wid=subject, within=date, between=location)

Warning: Converting "subject" to factor for ANOVA.

Warning: Data is unbalanced (unequal N per group). Make sure you specified a well-considered value for the type argument to ezANOVA().

Error in ezANOVA_main(data = data, dv = dv, wid = wid, within = within, : One or more cells is missing data. Try using ezDesign() to check your data.

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1 Answer 1

ezANOVA doesn't handle missing data, as the author outlines in this reponse to a similar question. You have two options:

  1. Remove the missing data manually. The function complete.cases may be of help here.
  2. Mike Lawrence alternatively suggests checking out ezMixed from the same package, which is more complicated but can handle missing data.

To remove the data manually, you would do something like this:

rm1.complete <- rm1[complete.cases(rm1),]

Then use rm1.complete in your analysis.

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thank you for your answer. I actually removed the missing data as you also mentioned but now I get the following notification: > anova_ez_loc=ezANOVA(data=rm1, dv=Nmin, wid=subject, within=date, between=location) Warning: Converting "subject" to factor for ANOVA. Error in ezANOVA_main(data = data, dv = dv, wid = wid, within = within, : One or more cells returned NA when aggregated to a mean. Check your data. is it possible this is because of "0" values of my response variable? –  Lorain Dec 21 '12 at 2:16
1  
Is rm1 the name of the dataset with the missing data removed? If you run complete.cases(rm1), what do you get? –  Jonathan Christensen Dec 21 '12 at 2:18
    
> rm1_na <- na.omit(rm1) is what I used, but now I see your point: I should be using rm1_na and not rm1. thank you!! (it is 3.20am here atm; brain=half-asleep) –  Lorain Dec 21 '12 at 2:20
    
anova_ez_loc=ezANOVA(data=rm1_na, dv=Nmin, wid=subject, within=date, between=location)' Warning: Converting "subject" to factor for ANOVA. Warning: Data is unbalanced (unequal N per group). Make sure you specified a well-considered value for the type argument to ezANOVA(). Error in ezANOVA_main(data = data, dv = dv, wid = wid, within = within, : One or more cells is missing data. Try using ezDesign() to check your data. –  Lorain Dec 21 '12 at 2:23
    
-sorry to bother you again but do you know how to solve this ^^^ problem :/ does this mean my data has to be balanced for use in ez? –  Lorain Dec 21 '12 at 2:31

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