The optimize function is only designed to handle one function argument as I understand it. But sometimes a function can depend on different input ranges of variables and parameters.

for example:

```
x.r<-rnorm(100)
y<-function(x,p) -x^2+p*1/exp(x^3)
optimize(y,upper=range(x.r)[2],lower=range(x.r)[1])
```

x.r. the domain of x being passed to y can change from sample to sample. Instead of using a generic x, I want to be able to draw from many x.r domains of values to run y over. Is there some way to modify the optimize function so that I could pass both y, the function, and x it's domain variables as well as the optimize parameter(s) p?

With the above I get an error:

```
> optimize(y,upper=range(x.r)[2],lower=range(x.r)[1])
Error in p * 1 : 'p' is missing
```

edit: per suggestion below (which makes sense... but) I tried.

```
x.r<-rnorm(100)
p<-seq(-5,5,1)
y<-function(x,p) -x^2+p*1/exp(x^3)
optimize(y,upper=range(x.r)[2],lower=range(x.r)[1],p)
```

results was: Error in p * 1 : 'p' is missing

Also,

```
> optimize(y,upper=range(x.r)[2],lower=range(x.r)[1],p,x.r)
Error in optimize(y, upper = range(x.r)[2], lower = range(x.r)[1], p, :
invalid function value in 'optimize'
```

any other ideas?

edit 2: per comments below a loop would work, but seems like an odd way to approach it. I'm not sure if it's uniquely taking the x.r domain into account either.

```
x.r<-rnorm(100)
p<-seq(-5,5,1)
y<-function(p=p,x=x.r) -x^2+p*1/exp(x^3)
for(v in p){
print(optimize(y,upper=range(p)[2],lower=range(p)[1],p=v))}
> for(v in p){
+ print(optimize(y,upper=range(p)[2],lower=range(p)[1],p=v))}
$minimum
[1] -4.999944
$objective
[1] -9.637547e+54
$minimum
[1] -4.999944
$objective
...
```

`optimize(y,upper=range(x.r)[2],lower=range(x.r)[1],p=some_variable)`

the idea is to add`p`

parameter at the end and pass to it any variable you want – iTech Feb 16 '13 at 22:31`p=3`

for example – iTech Feb 16 '13 at 22:45