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So I have a function that takes four numerical arguments and produces a numerical argument.

f(w,x,y,z) --> A

If I have the function f and a target result A, is there an iterative method for discovering parameters w,x,y,z that produce a given number A?

If it helps, my function f is a quintic bezier where most of the parameters are determined. I have isolated just these four that are required to fit the value A.


R,S,T,U,V,W are vectors where R and W are known, I have isolated only a single element in each of S,T,U,V that vary as parameters.

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It largely depends on the function itself - in the most general case, you'll have to iterate over every possible tuple of (w,x,y,z) –  Drew McGowen Aug 1 '13 at 18:56
There's not enough information here. This will depend on what your function F does. You will likely also need to set an upper bound limit. You will probably want to approach this algorithmically, rather than brute-forcing iteratively too. –  multiphrenic Aug 1 '13 at 18:57
Well, the function is a quintic bezier where I have isolated these four elements of the six vectors that are allowed to vary. I added more information. –  prismofeverything Aug 1 '13 at 18:57
@multiphrenic Right, I am looking for an algorithm. –  prismofeverything Aug 1 '13 at 19:03
I'm not knowledgeable enough to tell you anything specific to a quintic bezier, but you might want to look at the standard optimizations functions available in a package like SciPy, or just at black-box search algorithms (BBSAs) in general. They solve a superset of your problem, but they should work. –  Ryan Marcus Aug 1 '13 at 19:13

2 Answers 2

up vote 2 down vote accepted

The set of solutions of the equation f(w,x,y,z)=A (where all of w, x, y, z and A are scalars) is, in general, a 3 dimensional manifold (surface) in the 4-dimensional space R^4 of (w,x,y,z). I.e., the solution is massively non-unique.

Now, if f is simple enough for you to compute its derivative, you can use the Newton's method to find a root: the gradient is the direction of the fastest change of the function, so you go there.

Specifically, let X_0=(w_0,x_0,y_0,z_0) be your initial approximation of a solution and let G=f'(X_0) be the gradient at X_0. Then f(X_0+h)=f(X_0)+(G,h)+O(|h|^2) (where (a,b) is the dot product). Let h=a*G, and solve A=f(X_0)+a*|G|^2 to get a=(A-f(X_0))/|G|^2 (if G=0, change X_0) and X_1=X_0+a*G. If f(X_1) is close enough to A, you are done, otherwise proceed to compute f'(X_1) &c.

If you cannot compute f', you can play with many other methods.

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Can you elaborate how to use Newton's method to solve a multi-variate system of equations where there are more variables than equations? –  user2566092 Aug 1 '13 at 19:59
@user2566092: edited. –  sds Aug 1 '13 at 20:17

If you can impose 3 (or more) additional equations that you know (or suspect) must be true for your 4-variable solution that gives target value A, then you can try applying Newton's method for solving a system of k equations with k unknowns. Otherwise, without a deeper understanding of the structure of the function you are trying to make equal to A, the only general type of technique I'm aware of that's easy to implement is to simply define the error function as g(w,x,y,z) = |f(w,x,y,z) - A| and search for a minimum of g. Typically the "minimum" found will be a local minimum, so it may require many restarts of the minimization problem with different starting values for your parameters to actually find a solution that gives a local minimum you want of g = 0. This is very easy to implement and try in a few lines e.g. in MATLAB using fminsearch

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