I am trying to get consistent answers for a simple optimization problem, between two functions in MATLAB and Octave. Here is my code:

```
options = optimset('MaxIter', 500 , 'Display', 'iter', 'MaxFunEvals', 1000);
objFunc = @(t) lrCostFunction(t,X,y);
[result1] = fminsearch(objFunc, theta, options);
[result2]= fmincg (objFunc, theta, options);
```

(Bear in mind, that X, y, and theta are defined earlier and are correct). The problem is the following: When I run the above code in MATLAB with it using fmincg, (commend out fminsearch), I get the correct answer.

However, if I comment out fmincg and let us run fminsearch, I get no conversion whatsoever. In fact the output looks like this:

```
491 893 0.692991 reflect
492 894 0.692991 reflect
493 895 0.692991 reflect
494 896 0.692991 reflect
495 897 0.692991 reflect
496 898 0.692991 reflect
497 899 0.692991 reflect
498 900 0.692991 reflect
499 901 0.692991 reflect
500 902 0.692991 reflect
Exiting: Maximum number of iterations has been exceeded
- increase MaxIter option.
Current function value: 0.692991
```

Increasing the number of iterations doesnt do jack. In contrast, when using the fmincg, I see it converging, and it finally gives me the correct result:

```
Iteration 1 | Cost: 2.802128e-001
Iteration 2 | Cost: 9.454389e-002
Iteration 3 | Cost: 5.704641e-002
Iteration 4 | Cost: 4.688190e-002
Iteration 5 | Cost: 3.759021e-002
Iteration 6 | Cost: 3.522008e-002
Iteration 7 | Cost: 3.234531e-002
Iteration 8 | Cost: 3.145034e-002
Iteration 9 | Cost: 3.008919e-002
Iteration 10 | Cost: 2.994639e-002
Iteration 11 | Cost: 2.678528e-002
Iteration 12 | Cost: 2.660323e-002
Iteration 13 | Cost: 2.493301e-002
.
.
.
Iteration 493 | Cost: 1.311466e-002
Iteration 494 | Cost: 1.311466e-002
Iteration 495 | Cost: 1.311466e-002
Iteration 496 | Cost: 1.311466e-002
Iteration 497 | Cost: 1.311466e-002
Iteration 498 | Cost: 1.311466e-002
Iteration 499 | Cost: 1.311466e-002
Iteration 500 | Cost: 1.311466e-002
```

This gives the correct asnwer.

So what gives? Why is fminsearch not working in this minimization case?

Additional context:

1) Octave is the language that has fmincg btw, however a quick google result also retrieves this function. My MATLAB can call either.

2) My problem has a convex error surface, and its error surface is everywhere differentiable.

3) I only have access to fminsearch, fminbnd (which I cant use since this problem is multivariate not univariate), so that leaves fminsearch. Thanks!

`fmincg`

is not a function shipped with MATLAB but was provided as part of the homework. Thus you can't expect them to implement the exact same algorithm. Check this page to learn about the FMINSEARCH algorithm. – Amro May 27 '12 at 1:17`fminsearch`

is implemented in octave-forge – Amro May 27 '12 at 1:20`fminsearch`

is indeed used to solve non-linear unconstrained optimizations, it uses a "no derivatives" method (Simplex algorithm) which is different from what`fminunc`

does (it needs gradient of the function, or it computes an approximation using finite-differences) – Amro May 27 '12 at 1:32`fminsearch`

) can converge to non-stationary points on some problems that can be solved by alternative methods. Apparently the problem must satisfy stronger conditions than are necessary in other methods. I'm not really motivated to dig any deeper, perhaps you can learn more from this paper.. good luck to you :) – Amro May 27 '12 at 2:20