setup fmincon with nonlinear constraint condition

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I am doing an optimisation job using fmincon with nonlinear constraint condition. I have tried several different input dataset, but always got message indicating local minimum possible. I then configured fmincon options with more stringent stopping criteria. Surely, the computation took longer time and output different result comparing with previous fmincon setup. However, it still suggests local minimum possible.
I've tried all three fmincon optimisation methods. It turns out they mostly output quite different results. And, the active-set method is pretty slow.
Question: 1. Any tip to setup fmincon in order to get more or less convergent results.
2. Any tip to speedup the computation? Actually my problem is not that high dimension (10), and input data is not that large (around 10k).
Thank you very much for your suggestions.
Mono

Accepted Answer

Matt J
Matt J on 16 Jan 2015
Edited: Matt J on 16 Jan 2015
A local minimum is what fmincon is looking for. The message means it thinks it succeeded.
If you don't like the solution it found, it is possible that you need a better initial guess. That's a matter of art, I'm afraid.
  4 Comments
Matt J
Matt J on 16 Jan 2015
If you post a more detailed description of the problem, the community may also be able to recommend strategies for generating the initial guess. These strategies are always problem-specific, e.g., by approximating your true problem with something simpler and solving that, but maybe some custom advice can be given.
mono
mono on 16 Jan 2015
Thanks John. I will do that. But I am not really optimistic. Since I am doing synthetic test at the moment that I do know the correct answer. It enables me to set the initial as the perfect result. Unfortunately fmincon does not always converges to the one I want. One reason could be the stochastic uncertainty term I add in my model. Surely, if the uncertainty is too large and the dataset is not relatively large enough, it would be difficult to find the close result. Your suggestion just inspires me to do some research on the connection between the dataset size and uncertainty jump. Thanks John.

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