# Optimize a function several times R code

I have a function. From this I can estimate parameters easily.

``````sex <- c("F","M","F","M","F")
age <- rnorm(5,28,1.2)
dat <- data.frame(sex,age)
myfun <- function(par, x1,x2){

-sum(log(exp(par[1]*x1+par[2]*x2)))
}
myf <- optim(myfun, par=c(0.1,0.4), x1=dat\$age,x2=as.numeric(dat\$sex))\$par
``````

I want to optimize this function 10 times. If I use `replicate(10,myf)` then it gives same values 10 times. But I guess it will give some different parameter estimates every time due to `age <- rnorm(5,28,1.2)`. I want to do this using loop, how can I proceed?

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Use `replicate` on the entire code chunk, not just the optimization part. – Roman Luštrik Mar 24 '14 at 13:42

I'm not sure what you need, but would that work for you?

``````myfun <- function(par, x1,x2){

-sum(log(exp(par[1]*x1+par[2]*x2)))
}

sex <- c("F","M","F","M","F")

for (i in 1:10){
age <- rnorm(5,28,1.2)
dat <- data.frame(sex,age)
print(optim(myfun, par=c(0.1,0.4), x1=dat\$age,x2=as.numeric(dat\$sex))\$par)
}
``````
-

You can try:

``````myf <- sapply(
split(dat, 1:nrow(dat)),
function(dat.row) optim(myfun, par=c(0.1,0.4), x1=dat.row\$age,x2=as.numeric(dat.row\$sex))\$par
)
``````

Produces:

``````             1         2         3         4         5
[1,] 23.861664 24.517216 26.823635 24.913725 24.573490
[2,]  4.806402  4.911159  5.459353  4.943076  5.214703
``````

Where each column is the result of one run of `optim`.

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