I designed 3000 experiments, so that in one experiment there are 4 groups (treatment), in each group there are 50 individuals (subjects). For each experiment I do a standard one way ANOVA and proof if their p.values has a uni probability function under the null-hypothesis, but ks.test rejects this assumption and I cant see why?

```
subject<-50
treatment<-4
experiment<-list()
R<-3000
seed<-split(1:(R*subject),1:R)
for(i in 1:R){
e<-c()
for(j in 1:subject){
set.seed(seed[[i]][j])
e<-c(e,rmvnorm(mean=rep(0,treatment),sigma=diag(3,4),n=1,method="chol"))
}
experiment<-c(experiment,list(matrix(e,subject,treatment,byrow=T)))
}
p.values<-c()
for(e in experiment){
d<-data.frame(response=c(e),treatment=factor(rep(1:treatment,each=subject)))
p.values<-c(p.values,anova(lm(response~treatment,d))[1,"Pr(>F)"])
}
ks.test(p.values, punif,alternative = "two.sided")
```

`e<-c(e,rnorm(treatment,0,3))`

instad of`rmvnorm(mean=rep(0,treatment),sigma=diag(3,4),n=1,method="chol")`

I get better results. Is there a explanation for that behavior?. – Klaus Jun 29 '13 at 15:19