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I have a multivariate function that I want to optimize over one parameter:

cost <- function(theta, X, y) {
  m <- nrow(X)
  X <- as.matrix(X)
  J <- sum(-y * log(sigmoid(X %*% theta)) - (1-y) * log(1 - sigmoid(X %*% theta)))/m;

To optimize it, i use optim function. First, I create a wrapper, then use optim function to optimize wrapper function:

# X and y initialized before
initial_theta <- rep(0,ncol(X))
wrapper <- function(theta) cost(theta, X=X, y=y)
o <- optim(initial_theta, wrapper) 

How to optimize a multivariate function with optim without creating additional functions?

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you shouldn't need the wrapper at all -- optim(initial_theta, cost, X=X, y=y) should work –  Ben Bolker Jul 18 '12 at 16:40
@BenBolker - Thanks, it works. Post it as an answer, if you want your answer to be accepted. –  Nikita Barsukov Jul 18 '12 at 16:42
Go ahead and accept @Dason's, which says the same thing. –  Ben Bolker Jul 18 '12 at 16:43

1 Answer 1

up vote 3 down vote accepted

optim takes a ... parameter which passes any addition input to the function of interest. So you don't need to create a new function as long as the parameter you want to optimize over is the first parameter of the function of interest.

optim(initial_theta, cost, X = X, y = y)

should provide the same functionality as creating the extra function.

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