fminunc
Find the unconstrained minimum of a real function.
Syntax
x = fminunc(@func,x0)
x = fminunc(@func,x0,options)
[x,fval,info,output] = fminunc(...)
Inputs
- func
- The function to minimize. See the optimset option GradObj for details.
- x0
- An estimate of the location of the minimum.
- options
- A struct containing option settings.
Outputs
- x
- The location of the function minimum.
- fval
- The minimum of the function.
- info
- The convergence status flag.
- info = 4
- Relative step size converged to within tolX.
- info = 3
- Relative function value converged to within tolFun.
- info = 2
- Step size converged to within tolX.
- info = 1
- Function value converged to within tolFun.
- info = 0
- Reached maximum number of iterations or function calls, or the algorithm aborted because it was not converging.
- info = -3
- Trust region became too small to continue.
- output
- A struct containing iteration details. The members are as follows:
- iterations
- The number of iterations.
- nfev
- The number of function evaluations.
- xiter
- The candidate solution at each iteration.
- fvaliter
- The objective function value at each iteration.
Examples
function obj = Rosenbrock(x)
obj = (1 - x(1))^2 + 100 * (x(2) - x(1)^2)^2;
end
x0 = [-1.2, 1.0];
[x,fval] = fminunc(@Rosenbrock, x0)
x = [Matrix] 1 x 2
1.00000 1.00000
fval = 1.29122e-15
function obj = Rosenbrock2(x, offset)
obj = (1 - x(1))^2 + 100 * (x(2) - x(1)^2)^2 + offset;
end
handle = @(x) Rosenbrock2(x, 2);
[x,fval] = fminunc(handle, x0)
x = [Matrix] 1 x 2
0.99999 0.99999
fval = 2
Comments
fminunc uses a quasi-Netwon algorithm with damped BFGS updates and a trust region method.
Options for convergence tolerance controls and analytical derivatives are specified with optimset.
To pass additional parameters to a function argument, use an anonymous function.
- MaxIter: 400
- MaxFunEvals: 1,000,000
- TolFun: 1.0e-7
- TolX: 1.0e-7
- GradObj: 'off'
- Display: 'off'