I am running a simulation trying to find the probability of something taking place in a number of binomial trials. I start with specifying the data

```
iter=5000
data=data.frame(prob=runif(300), value=runif(300))
data<-data[sample(nrow(data), iter, replace=T),]
```

then I add the trials

```
cols <- c("one","two","three","four","five","six",
"seven","eight","nine","ten","eleven","twelve")
data[,cols] <- NA
```

`one`

contains the results of only one binomial trials, `two`

contains the results of two binomial trials and so on. If a binomial event takes place in any of the `one`

, `two`

, `three`

, ..., `twelve`

, the cell is marked 1 else 0.

Then I run the trials for `iter=5000`

simulations

```
for (col in 3:14) {
for (i in 1:iter) if (sum(rbinom((col-2),1,data[i,1]))>0) data[i,col]<-1 else data[i,col]<-0
}
```

Then I evaluate the `mean(data$value[data$one==0]`

till ... `mean(data$value[data$twelve==0]`

My problem is that the simulation code takes forever for `iter>15000`

.

```
for (col in 3:14) {
for (i in 1:iter)
data[i,col] <- if (sum(rbinom((col-2),1,data[i,1]))>0) 1 else 0
}
```

Any ideas?

`Error in if (sum(rbinom((col - 2), 1, data[i, 1])) > 0) 1 else 0 : missing value where TRUE/FALSE needed`

– Chase Dec 12 '11 at 22:10`if...else`

. The function is named`ifelse()`

. I'm having a hard time understanding what you're trying to do with this code, but I can almost assure you we can get rid of at least one for loop, if not both of them with vectorized solutions which will run MUCH faster. – Chase Dec 12 '11 at 22:12`prob`

has to be`runif(300)`

, not`rnorm(300)`

since it is a probability. – Brian Diggs Dec 12 '11 at 22:29`iter`

. I'm not sure why, though, because there is only a single loop over`iter`

. I'm guessing it has to do with copying data around. Extrapolating from timings I ran, 15000 would take my computer about half an hour. – Brian Diggs Dec 12 '11 at 22:33