[R] DE optimization with equality constraint
Hans W. Borchers
hwborchers at gmail.com
Sat Mar 29 22:33:44 CET 2008
> Reply to "Optimization with constraint" on March 14, 2008
One can get an accurate solutons applying the "Differential Evolution" algorithm
as implemented in the DEoptim package:
f2 <- function(x){
if (x[1] + x[2] < 1 || x[1] + x[2] > 1) {
r <- Inf
} else {
r <- x[1]^2 + x[2]^2
}
return(r)
}
lower <- c(0, 0)
upper <- c(1, 1)
DEoptim(f2, lower, upper, control=list(refresh=200))$bestmem
iteration: 200 best member: 0.5 0.5 best value: 0.5
This approach assumes nothing about the gradient, hessian or whatever. And the
equality is split into two inequalities assuming no relaxation or penalty.
Andreas Klein <klein82517 <at> yahoo.de> wrote:
>
> Hello.
>
> I have some problems, when I try to model an
> optimization problem with some constraints.
>
> The original problem cannot be solved analytically, so
> I have to use routines like "Simulated Annealing" or
> "Sequential Quadric Programming".
>
> But to see how all this works in R, I would like to
> start with some simple problem to get to know the
> basics:
>
> The Problem:
> min f(x1,x2)= (x1)^2 + (x2)^2
> s.t. x1 + x2 = 1
>
> The analytical solution:
> x1 = 0.5
> x2 = 0.5
>
> Does someone have some suggestions how to model it in
> R with the given functions optim or constrOptim with
> respect to the routines "SANN" or "SQP" to obtain the
> analytical solutions numerically?
>
> Again, the simple example should only show me the
> basic working of the complex functions in R.
>
> Hope you can help me.
>
> With regards
> Andreas.
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