Why fminunc does not find the true global minimum?

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MRC
MRC 2014년 2월 3일
댓글: MRC 2014년 2월 3일
Hi all, I should solve this unconstrained optimization problem (attached). I know that the function has the global minimum at [1 2 2 3]. However, if I set as starting value [1 2 2 3], the algorithm ends up at [1.1667 2.4221 2.2561 3]. I have some doubts to clarify (I'm not familiar with this topic, sorry for my trivial questions):
1) The algorithm output reveals that at iteration 0 the function takes value 5.47709e-06 and at iteration 10 the function takes value 1.41453e-06. But, if I compute the function value at [1 2 2 3] I get 1.4140e-06 and if I compute the function value at [1.1667 2.4221 2.2561 3] I get 1.5635e-06. Why are these values different from the starting and final function values reported in the algorithm output?
2) How can I force the algorithm to keep searching until it arrives at [1 2 2 3]?
Thanks!

채택된 답변

Matt J
Matt J 2014년 2월 3일
When you call fminunc with all 5 outputs
[x,fval,exitflag,output,grad,hessian]= fminunc(...)
what are the values of these outputs?
In particular, if the true Hessian is singular at the global min [1 2 2 3], I can imagine its finite difference estimate, as computed by fminunc, could be numerically problematic, e.g., not positive definite.
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Matt J
Matt J 2014년 2월 3일
편집: Matt J 2014년 2월 3일
my problem cannot be reparameterize in the way you suggest.
Forget it. Nevertheless, your code can be cleaner and more efficient. Below is my idea of what it should look like. Notice that there is alot that you can pre-compute in the interests of speed. Notice also the more modern way of passing fixed data and parameters to functions.
thetatrue=[1 2 2 3];
mu = [0 0];
sd = [1 0.3; 0.3 1];
A1(:,2)=-ix(:,1); A1(:,1)=-1;
A2(:,2)=-ix(:,2); A2(:,1)=-1;
cdfun=@(x) mvncdf( [A1*[x(1);x(3)], A2*[x(2);x(4)] ],mu,sd);
W1=cdfun(thetatrue);
W2=1-W1;
options=optimset('Display','iter','MaxIter',10000,'TolX',10^-30,'TolFun',10^-30);
theta0=[1 2 2 3]; %Starting values
[theta,fval,exitflag,output]=...
fminunc(@(x) log_lik(x, cdfun,W1,W2),theta0,options);
function val=log_lik(theta,cdfun,W1,W2)
z=cdfun(theta);
val=-sum(W1.*log(z)+W2.*log(1-z));
MRC
MRC 2014년 2월 3일
thank you!

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추가 답변 (1개)

Alan Weiss
Alan Weiss 2014년 2월 3일
I did not look at your data. But I doubt that the true global minimum is at [1 2 2 3] if you are really fitting to data. I would bet that you generated data from a known distribution, and then fit the model to that data. You will never get perfect match to the initial distribution, because the data that you used is not perfectly distributed according to the theoretical distribution.
For instance, this toolbox example shows theoretical parameters of [1 3 2], and yet the fitted model has parameters [1.0169 3.1444 2.1596], and the fitted model is at a global minimum for that data set.
Alan Weiss
MATLAB mathematical toolbox documentation
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MRC
MRC 2014년 2월 3일
If the function I maximized was the sample log-likelihood function for Y|X~f(theta), then you were right; but the function that I maximize is the expected log-likelihood and the data are just the X I'm conditioning on. I'm sure that the expected log-likelihood is maximized at [1 2 2 3] (I have some theoretical results which actually show this). Is there anyone who can help me in answering questions 1 and 2?

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