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I need to approximate a table-defined 2D-function like that

x0 y0
x1 y1
...
xn yn

for every point I have a "weight" (root-mean-square error for this measure). I need to write a function like this:

typedef std::vector< double > DVector;
void approximate2D(
      const DVector & x
    , const DVector & y
    , const DVector & weights
    , double newMeasuredX
    , double newMeasuredY
    , double newMeasuredWeight
    , double & outApproximatedX
    , double & outApproximatedY
);

to get one value ( outApproximatedX; outApproximatedY ) depend on previous values and new measured value.

Root-mean-square (RMS) error should be used as follows: if a RMS error is minimal, then desired function should go close to this point, if a RMS error is maximal, then this point should be use with a minimal contribution.

Approximation should be linear (I think), since I know, that desired function is a straight line.

Googled about a half of a day, and did not found any suggestions.

Thank you.

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Do you know std::vector is actually a class template and so you need to provide atleast one type argument when you typedef it? –  Nawaz Mar 19 '11 at 12:49
    
Nawaz of course I know it. Just forgot. And... what's happening ? there is < double > in my post, but I have a copy of my post in clipboard - there is no type for vector... hmmm –  borisbn Mar 19 '11 at 13:37
    
I don't understand what it is you want the function to do. In a simple (or weighted) linear fit; what you want to calculate is the slope and offset of a line (y = k x + m), that passes as closely as possible to the given points. It doesn't make sense to return another point. –  Markus Jarderot Mar 19 '11 at 18:20
    
Check alglib alglib.net/interpolation/leastsquares.php –  belisarius Mar 19 '11 at 18:23

3 Answers 3

up vote 2 down vote accepted

To minimize the total squared closest distances to the line a x + b y = r, you can't use matrix equations, since the problem is no longer linear.

The distance to the line can be defined as follows. Then the function you want to minimize is f(a,b,r). This task is simplified somewhat when a2 + b2 = 1.

Concepts

If you expand that, it gets quite complex. I managed to break it down and simplify it somewhat.

Calculations, calculations, calculations!

To calculate this over many points (O(n2)) can get slow. There is however an easy optimization. Instead of calculating the sums over and over again, you can store partial results:

Something that looks like an algorithm

Here the σ variables are accumulators for common terms. Each time you want to add another point to the calculations, you update the 9 variables, and use those to calculate a, b and r as before.

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What you want is a space-filling-curve either a Hilbert-Curve or a Peano-Curve. A sfc is a good approximation of a 2D or XD grid.

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Thanks a lot for MizardX. A great help. That is what I wrote ( if someone need :) )
http://liveworkspace.org/code/815e2cc0810ab8ef14951252cca3fbbf

P.S. I can't vote for MizardX (no reputation). Can somebody do it for me ?

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You should know that the equation minimizes the squared vertical (y²) distance to the line, not the closest distance. To minimize the squared closest distance to the line, it'll require some more work. I could update the answer if this is what you want instead. –  Markus Jarderot Mar 22 '11 at 1:37
    
Ouh, I didn't know this. Of course I need to minimize a distances to desired line (x^2+y^2). Could you help me with that ? –  borisbn Mar 24 '11 at 15:03
    
Updated my answer. Discarded the matrix calculations, but now it uses the closest distance. –  Markus Jarderot Mar 24 '11 at 19:42

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