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I'm trying to perform a minimisation where some parameters must sum to one using PyMinuit. I'm wondering if there is a standard method of implementing this kind of thing?

Is it usual to set the function to some large value if the constraint is not met? e.g.

def f(params):
    if params.sum() != 1:
        return 1e6
        ... compute actual value ...

Is it a very bad idea to normalise the parameters each round? e.g.

if params.sum() != 1:
    for param in params:
        param = param / params.sum()


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1 Answer 1

up vote 1 down vote accepted

I think you probably want to alter things so that the constraint is baked in to your minimization. Without some more details about what you're doing, exactly, I'd try introducing a Lagrange multiplier. It's a pretty common thing to do in a freshman calculus course, so you should be able to find lots of examples online.

PS: Are you using PyMinuit because you're doing particle physics?

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Thanks for the advice, I'll see if I can get Lagrange multipliers into the minimisation. The biggest problem I can see with doing it this way in my code is that the function f will be generated behind the scenes and passed to the minimisation routine. I think SymPy may be quite useful for getting the derivative at run-time though. P.S. I am doing particle physics, but the problem is based in nuclear. ;) –  user1353285 Feb 19 '13 at 10:28
Yeah I was trying to think how you'd manage to minimize something with constraints NOT using Lagrange multipliers. –  BenDundee Feb 19 '13 at 13:44

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