# c# Numerical Polynomial Regression

I'm beginning one of my first C# projects--need to find the curve fit for several x-y data points.

For example:

x: 1,2,3,4,5,6 y: 0.5,5,0.5,2.5,5,0.5

As it happens, the proper curve fit I need for these points is a sixth-order polynomial, according to excel.

How can I get the coefficients and exponents of this curve to write the proper expression in C#? I want to stay away from libraries, because this will most likely end up being converted to C for use on microprocessors.

I'm new to C# and know very little about hardware/software integration.

That said, I'm reading about numerical methodology right now...step two of this project will be to take the curve and numerically integrate between successive minimums...

The input will be given by six x-y coordinates...

Problem #1: How do I write a polynomial given six coordinates?

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Which part do you have problems with? – Dan Andrews May 15 '12 at 17:12
Haha. Sorry, Dan. Problem #1: Polynomial regression... – Kevin Brown May 15 '12 at 17:16
I didn't -1. You should look on how to do regression and if there's a specific concern with your code, please post it for suggestions. It sounds like you're just asking for someone to write it for you. – Dan Andrews May 15 '12 at 17:24
Good point...not looking for the answer...just don't know where to begin. – Kevin Brown May 15 '12 at 17:26

The problem of finding the coefficients of a polynomial given n points evaluated at certain xi is known as polynomial interpolation problem. You can read the details of the problem and its solutions here (wikipedia.org).

You should pay close attention to the section Constructing the interpolation polynomial, where they mention that the matrix you need to invert can introduce large errors if you use Gaussian elimination, and check out Newton interpolation (wikipedia.org) for a better approach. It probably won't matter much for only six points, but it is worth knowing about.

As for implementation, you have two options: make use of a third party library that has linear algebra support - such as Science Code .Net (sciencecode.com), or start writing some basic abstractions for vectors and matrices, and implement basic operations such as multiplication, addition, and inversion. Back in the day, we used a library called "Numerical Recipes in C", and they may well have a port for C#. It may be worth checking out.

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Exactly the track I need to begin... – Kevin Brown May 15 '12 at 17:40
@KevinBrown Good to hear. I edited the answer with a link to a library you can use. – vhallac May 15 '12 at 17:46
Lagrange Interpolation, I found, was exactly what I needed to get the job done... – Kevin Brown May 16 '12 at 14:04

It looks like you are seriously overfitting if you think a sixth order polynomial is the best fit for six data points and I'm curious if you actually mean that you will have only six points in the actual data (in which case fitting doesn't make sense) or that you have only six sample points and are expected to predict the actual shape of the data.

https://www.coursera.org/course/ml has an excellent class on machine learning, more specifically relevant because it teaches about choosing the proper order of polynomial automatically, partitioning data and more fundamental aspects such as the matrix math that are underlying the whole thing.

It isn't the kind of thing you can point to "algorithm X" and hope it will come out right... the ML course covers a lot of the mistakes people make (over fitting, under fitting, poor data sampling, etc...) when doing fitting to data. It also discusses how to avoid them.

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Not overfitting...it's a simplified model of eddy-current induction. – Kevin Brown May 15 '12 at 17:39
Ah, so you aren't sampling data then, which makes my answer wrong. – Godeke May 15 '12 at 17:40
Hmmmm...We will be sampling eventually...so maybe you're okay. ;) – Kevin Brown May 15 '12 at 17:46