Is there a c# lib to fit data to normal distribution?

I found a similar question but it has no exact answer.

What I need is given a real world data set: `List<double>` and assume it fits a normal distribution. I need to get the distribution(the mean and sdv). I am using math.net to calculate data in my application. Can math.net do this and how? Or is there any other C# library can do this?

Thanks a lot.

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Would you agree stackoverflow.com/questions/7741863/gaussian-fit-in-c-sharp is a dupe? – AakashM May 10 '12 at 9:10
Or if you are happy to pay, NMath appears to be able to do this – AakashM May 10 '12 at 9:11
@AakashM, yes I've searched those questions and none of them gives a simple C# solution, they either wrap C/C++ code with C# or re-implement by their own. It is better if there's an handy library. And, much better if it's free. – Chris Li May 10 '12 at 9:19
Just to clarify, you need to obtain estimates of the distribution parameters, right? – Gebb May 10 '12 at 9:40
@Gebb, that's right. – Chris Li May 10 '12 at 11:46

Wikipedia gives you formulas to calculate the estimates of the normal distribution parameters. The expressions are simple so you actually don't need any third party libraries to perform the calculations.

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Thanks Gebb, seems like I have to calc it myself. I'd thought Math.Net could do this. However, if there's another distribution to be fit I still need to re-calc the parameters, whose formula may not be so simple. Is it true that there's no free C# library to use? – Chris Li May 11 '12 at 5:48
@ChrisLee: I don't know of any library allowing to estimate arbitrary distribution parameters. – Gebb May 11 '12 at 6:40

I'm on the CenterSpace NMath team. We use a robust trust region minimizer to solve this nonlinear fitting problem. Depending on your data you may be able to do this with the more widely accessible Levenberg-Marquardt minimization algorithm well documented on wikipedia.

http://www.centerspace.net/blog/nmath/nmath-tutorial/distribution-fitting-demo/

No our library isn't free...but this code may give you some ideas.

Best,

Paul

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thanks, I'll have a try. – Chris Li Jun 29 '12 at 5:00