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.

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,

share|improve this question
    
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

3 Answers 3

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.

share|improve this answer

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).

share|improve this answer
up vote 0 down vote accepted
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)
}
share|improve this answer

Your Answer

 
discard

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

Not the answer you're looking for? Browse other questions tagged or ask your own question.