# How to perform double-pair mating with R. Fixing some code issues please

I am workin on plants, and as you may know, we have to do lot of crosses to improve our varieties. One kind of cross is called "double-pair mating'. I would like to realize a double-pair mating (it means that each parent of an initial population take place in 2 differents crosses exactly) in order to create un pedigree, for future breeding calculation values.

It's just a problem of logic because I do not practice enough R. I think you could help me without understanding all that stuff.

The part bellow shows where I am stuck. #selection of pairs

``````  pairs <- data.frame()
for (i in 1:2) {
pairs <- rbind(pairs,(data.frame(dam=sample(pdams, npairs, replace=TRUE), sire=sample(psires, npairs, replace=TRUE))))
}
**
``````

Here is my entire script :

``````##################################
####### PEDIGREE FUNCTION ########
##################################

# function to create a pedigree with dispersal
# inputs:
# nids = list of number of individuals per generation
# ngenerations = number of generations to simulate
# epm = rate of extra-pair mating (defaults to NULL, no extra-pair)
# missing = probability that one parent is missing in the pedigree
# nonb = proportion of each generation that is non-breeding
# gridsize = length of one size of (square) spatial grid
# dispmean = mean dispersal distance (lognormal)
# dispvar = variance in dispersal distance (lognormal)

pedfun<-function(nids, ngenerations, epm=NULL, missing=NULL, nonb=0.4,
gridsize=50, dispmean, dispsd){

# get list of individuals and their generations
gener<-1:ngenerations

genern <- rep(1:ngenerations, times = nids)
ID <- 1:sum(nids)

# runs on generation-by-generation basis
for(i in 1:ngenerations){

id<-ID[which(genern==i)]
dam<-rep(NA, nids[i])
sire<-rep(NA, nids[i])

Xloc<-rep(NA, nids[i])
Yloc<-rep(NA, nids[i])

# randomly allocates sex (0 = male, 1 = female)
sex<-sample(c(0,1), length(id), replace=TRUE)

# for first generation, no dams or sires are known
# so remain NA

if(i==1){

# for first generation
# spatial locations sampled at random for X and Y coordinates
Xloc<-sample(1:gridsize, length(id), replace=TRUE)
Yloc<-sample(1:gridsize, length(id), replace=TRUE)

# combine into single data frame
pedigree<-data.frame(id=id, dam=dam, sire=sire,
generation=i, sex=sex,
Xloc=Xloc, Yloc=Yloc, disp_dist=NA,
fall=0)

}else if(i>1){

# for all generations after first
# list of all possible dams and sires
# from previous generation
pdams<-pedigree\$id[which(pedigree\$generation==(i-1) &
pedigree\$sex==1)]
psires<-pedigree\$id[which(pedigree\$generation==(i-1) &
pedigree\$sex==0)]

# determine number of pairs
# depending on how many males and females
# and the proportion of the population that is non-breeding
npairs<-min(length(pdams), length(psires)) -
round(min(length(pdams), length(psires))*nonb)

# selects breeding males and females
pdams<-pedigree\$id[which(pedigree\$generation==(i-1) &
pedigree\$sex==1 & pedigree\$fall==0)]
psires<-pedigree\$id[which(pedigree\$generation==(i-1) &
pedigree\$sex==0 & pedigree\$fall==0)]

if(length(pdams)<npairs | length(psires)<npairs){
npairs<-min(length(pdams), length(psires))
}

#selection of pairs

pairs <- data.frame()
for (i in 1:2) {
pairs <- rbind(pairs,(data.frame(dam=sample(pdams, npairs,         replace=TRUE), sire=sample(psires, npairs, replace=TRUE))))
}
**

# gives each offspring their parental pair
pairid<-as.numeric(sample(rownames(pairs),
length(id), replace=TRUE))

# gives each offspring their sex
sex<-sample(c(0,1), length(id), replace=TRUE)

# put into dataframe format