# Simple loop coding issue

I am a new user of R and I have tried to write a script for similuting species invasion and community stability. I have almost finished it and I have only one tiny problem in a loop.

I have a pool of 40 species (1,2,...) and I create a community by successive invasions. Species in the community leave the invaders pool unless they go extinct(i put a density threshold value).

I want a lot of invasions (>4000) so I created a vector with 4000 number between 1 and 40 (random.order) but I have a problem because my matrix with the species density (init.x) has not the same number of elements as my vector.

``````time<- list(start=0,end=4000,steps=100)
# Initial conditions (set all species to zero in the beginning)
init.x <- runif(n)*0
# generate random order in which species are introduced
init.order<- sample(1:n)
order<-rep(order,100)
random.order<-sample(order,size=length(order))
outt <- init.x
**for (i in 1:4000){
# Introduce 1 new species (according to vector "random.order") with freq 1000*tol
# if the species is not yet in the init.x matrix
if (init.x[random.order[i]]<tol) {init.x[random.order[i]] <- 1000*tol}**
# integrate lvm model
out <-n.integrate(time=time,init.x=init.x,model=lvm)
# save out and attach it to outt
outt <- rbind(outt,out)
# generate new time window to continue integration
time <- list(start=time\$end, end = time\$end+time\$end-time\$start,
steps=100)
}
``````

I know this is probably very simple but I can't find out a way to write my loop to have more invasions than the number of species (number of raws in my matrix).

Thanks a lot,

-
The line `order<-rep(order,100)` may be causing you problems because you don't appear to be initialising `order` anywhere. –  Richie Cotton May 10 '11 at 14:59
Also, if you know the size that `outt` should end up with, it's better to preallocate it rather than growing it in the loop with `rbind`. –  Richie Cotton May 10 '11 at 14:59
I'm not understanding your code. For instance, what's n? n is 4000? What's tol? and what's n.integrate? Maybe people out there can help you if the information you provided, but I would need more information to help you. –  Manoel Galdino May 10 '11 at 16:16

You probably want to change

``````# Initial conditions (set all species to zero in the beginning)
init.x <- runif(n)*0
# generate random order in which species are introduced
init.order<- sample(1:n)
order<-rep(order,100)
random.order<-sample(order,size=length(order))
``````

Into

``````# Initial conditions (set all species to zero in the beginning)
init.x <- rep.int(0, n) #should be a lot faster
# generate random order in which species are introduced
random.order<-sample.int(n,size=4000, replace=TRUE)
``````

...to solve your main problem (check ?sample). I have not checked the rest of you code, but there may be room for more optimization.

-

I'm not clear on what your problem is, and what it going into `outt`. You may want to initalise it with `list()`.

As for choosing a random invader you could try:

``````init.x[sample(which(init.x<tol),1)] <- 1000*tol
``````

This avoids the `if` statement and the need for the pre-computed random trials (which may fail to produce an invasion if a community species is selected).

-
``````time<- list(start=0,end=1000,steps=1000)
# Initial conditions (set all species to zero in the beginning)
init.x <- runif(n)*0
# generate random order in which species are introduced
order <- sample(1:n)
outt <- init.x
for (i in 1:n){
# Introduce 1 new species (according to vector "order") with freq 1000*tol
init.x[order[i]] <- 1000*tol
# integrate lvm model
out <-n.integrate(time=time,init.x=init.x,model=lvm)
# save out and attach it to outt
outt <- rbind(outt,out)
# generate new time window to continue integration
time <- list(start=time\$end, end = time\$end+time\$end-time\$start,
steps=1000)
}
``````
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