Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

The goal: calculate 95% confidence intervals for eta values from a repeated measures ANOVA.

The design is a two factor design (Factor 1 has 3 levels, Factor 2 has 7 levels) that is fully crossed with 30 subjects. However, I am unsure I am doing the bootstrapping correctly to calculate confidence intervals for eta. I use the boot() function to bootstrap sample by subjects, but leave the factors and the levels within the factors alone. So I'm not sure if I am doing this correctly or not - do I need to do a more complicated bootstrapping/resampling where I resample by factor/levels or is it okay to just do at the level of subjects. My code seems to give reasonable results...

library(ez)
library(boot)
library(reshape2)

###create a data.frame for a 2-factor (Factor1-3 levels, Factor2-7 levels) fully crossed design with 30 subjects & fill fake data values
subject.number<-factor(rep(1:30,each=21))
factor1.levels<-rep(rep(c("level1","level2","level3"),each=7),30)
factor2.levels<-rep(rep(c("level1","level2","level3","level4","level5","level6","level7"),3),30)
set.seed(1234)
fake.data<-rnorm(630,mean=3)
dframe<-data.frame(subject.number,factor1.levels,factor2.levels,fake.data)
names(dframe)<-c("Subject","Factor1","Factor2","OutcomeValue")


###to work with boot() convert from long to wide format
dframe.wide<-dcast(dframe,Subject~Factor1+Factor2,value.var="OutcomeValue")


###function to use with boot() to calculate generalized eta value for Factor1, Factor2, and Factor1xFactor2 interaction in a repeated measures ANOVA

generalized_eta<-function(data,indices){
  d.wide<-data[indices,] #use boot() indices to sample data

  #now that have used indices from boot(), convert data back to long with correct Factor labeling
  dframe.long<-melt(d.wide,value.name="OutcomeValue",id="Subject")
  dframe.long<-cbind(dframe.long,colsplit(dframe.long$variable,"_",c("Factor1","Factor2")))
  dframe.long$Factor1<-factor(dframe.long$Factor1)
  dframe.long$Factor2<-factor(dframe.long$Factor2)
  dframe.long$Subject<-factor(dframe.long$Subject)

  #do repeated measures ANOVA with ezANOVA() which calculates generalized eta
  aov.ez = ezANOVA(data = dframe.long, dv = .(OutcomeValue), wid = .(Subject), within = .(Factor1,Factor2), type = 1)
  #return the three generalized eta values - Factor1, Factor2, Factor1xFactor2
  return(aov.ez[[1]]$ges)
}


###call boot() to do the bootstrap - only 200 to make it fast
results<-boot(data=dframe.wide,statistic=generalized_eta,R=200)


###plot the bootstrap results
plot(results,index=1) #for Factor1
plot(results,index=2) #for Factor2
plot(results,index=3) #for Factor1xFactor2

###create 95%-CI from bootstrap results
boot.ci(results,type="bca",index=1) #for Factor1
boot.ci(results,type="bca",index=2) #for Factor2
boot.ci(results,type="bca",index=3) #for Factor3
share|improve this question
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.