[R] any more direct-search optimization method in R
Weijie Cai
wcai11 at hotmail.com
Tue Feb 28 21:37:33 CET 2006
Hi All,
Thanks for all your replies especially for Graves suggestions. You are right
I should give more information about my function. So my responds to your
questions are:
1. 2. the function itself is not continuous/smooth. The evaluation at each
point is a random number with a non-constant variance. When it approaches
the global minimum, the variance is very small. There is some kind of
structure from the surface plot of my function but its form is intractable,
unfortunately.
3. 4. each evaluation of my function is not slow. The returned results by
constrOptim() are just not quite close to true global minimum (error can be
as large as 0.2). Of course I can ignore the message of nonconvergence, the
precision is really not satisfying. Every time nelder-mead will use up 300
default iterations when doing optimization. I guess the essential reason is
the randomness of function surface.
5. Yes I am sure there is a global minimum. I did a lengthy computation at
rough grids and global minimum is very close to true minimum.
6. Do you mean I start from a "minimum" found by grid searching? That's what
I did. I never tried using smooth functions to approximate my function
though.
WC
>From: Spencer Graves <spencer.graves at pdf.com>
>To: Ingmar Visser <I.Visser at uva.nl>
>CC: Weijie Cai <wcai11 at hotmail.com>, r-help at stat.math.ethz.ch
>Subject: Re: [R] any more direct-search optimization method in R
>Date: Tue, 28 Feb 2006 09:33:35 -0800
>
>WC:
>
> What do you mean by "noisy" in this context?
>
> 1. You say, "gradient, hessian not available". Is it continuous with
>perhaps discontinuities in the first derivative?
>
> 2. Or is it something you can compute only to, say, 5 significant
>digits, and some numerical optimizers get lost trying to estimate
>derivatives from so fine a grid that the gradient and hessian are mostly
>noise?
>
> 3. Also, why do you think "constrOptim" is too slow? Does it call your
>function too many times or does your function take too long to compute each
>time it's called?
>
> 4. What's not satisfactory about the results of "constrOptim"?
>
> 5. Do you know if only one it has only one local minimum in the region,
>or might it have more?
>
> 6. Regardless of the answers to the above, have you considered using
>"expand.grid" to get starting values and narrow the search (with possibly
>system.time or proc.time to find out how much time is required for each
>function evaluation)? I haven't tried this, but I would think it would be
>possible to fit a spline (either exactly or a smoothing spline) to a set of
>points, then optimize the spline.
>
> hope this helps.
> spencer graves
>
>Ingmar Visser wrote:
>
>>If you have only boundary constraints on parameters you can use method
>>L-BFGS in optim.
>>Hth, ingmar
>>
>>
>>
>>>From: Weijie Cai <wcai11 at hotmail.com>
>>>Date: Tue, 28 Feb 2006 11:48:32 -0500
>>>To: <r-help at stat.math.ethz.ch>
>>>Subject: [R] any more direct-search optimization method in R
>>>
>>>Hello list,
>>>
>>>I am dealing with a noisy function (gradient,hessian not available) with
>>>simple boundary constraints (x_i>0). I've tried constrOptim() using
>>>nelder
>>>mead to minimize it but it is way too slow and the returned results are
>>>not
>>>satisfying. simulated annealing is so hard to tune and it always crashes
>>>R
>>>program in my case. I wonder if there are any packages or functions can
>>>do
>>>direct search optimization?
>>>
>>>A rough search in literature shows multidirectional search and DIRECT
>>>algorithm may help. Is there any other satisfying algorithm?
>>>
>>>Thanks,
>>>WC
>>>
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>>
>>
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