# C# Normal Random Number

I would like to create a function that accepts `Double mean`, `Double deviation` and returns a random number with a normal distribution.

Example: if I pass in 5.00 as the mean and 2.00 as the deviation, 68% of the time I will get a number between 3.00 and 7.00

My statistics is a little weak…. Anyone have an idea how I should approach this? My implementation will be C# 2.0 but feel free to answer in your language of choice as long as the math functions are standard.

I think this might actually be what I am looking for. Any help converting this to code?

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Thanks everyone who has posted so far. You are pointing me in the right direction. I did not realize this was such a complex task. I was pretty sure someone would cough up a 4 liner in no time. –  J.Hendrix Oct 26 '09 at 18:54

See this CodeProject article: Simple Random Number Generation. The code is very short, and it generates samples from uniform, normal, and exponential distributions.

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+1 I think this may be exactly what I am looking for! Thanks. –  J.Hendrix Oct 26 '09 at 19:01
Thanks, this perfect. Not too long and does exactly what I want it to do. –  J.Hendrix Oct 27 '09 at 13:44
Simple it is and works great. good job! –  hagensoft Oct 6 '12 at 20:37

You might be interested in Math.NET, specifically the Numerics package.

Caveat: The numerics package targets .NET 3.5. You may need to use the Iridium package if you are targeting an earlier version...

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Looking at the feature at mathdotnet.com/doc/IridiumFeatures.ashx now... Not quite sure which function I want. Maybe one of the Continuous Probability Distributions? I might just have to download the source and pour over the code tonight. –  J.Hendrix Oct 26 '09 at 18:23
You want to use MathNet.Numerics.Distributions, and do something like that, which will draw from a Normal with mean 5.0 and sigma 0.68: var mu = 5.00; var sigma = 0.68; var normal = new NormalDistribution(mu, sigma); var draw = normal.NextDouble(); –  Mathias Oct 26 '09 at 20:57

Here is some C that returns two values (rand1 and rand2), just because the algorithm efficiently does so. It is the polar form of the Box-Muller transform.

``````void RandVal (double mean1, double sigma1, double *rand1, double mean2, double sigma2, double *rand2)
{
double u1, u2, v1, v2, s, z1, z2;

do {
u1 = Random (0., 1.);  // a uniform random number from 0 to 1
u2 = Random (0., 1.);
v1 = 2.*u1 - 1.;
v2 = 2.*u2 - 1.;
s = v1*v1 + v2*v2;
} while (s > 1. || s==0.);

z1 = sqrt (-2.*log(s)/s)*v1;
z2 = sqrt (-2.*log(s)/s)*v2;
*rand1 = (z1*sigma1 + mean1);
*rand2 = (z2*sigma2 + mean2);
return;
``````

}

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It would be helpful if you named your variables something other than "u", "v", etc., for example, mean and sigma are very helpful. –  lorddev Oct 23 '10 at 1:10
The variables u, v, z, and s are used to maintain consistency with the customary mathematical notation used in the Box-Muller transform. –  Ian W Dec 6 '12 at 17:19
As a tutor I can attest that it would have been helpful for most people if the customary mathematical notations themselves had been labeled more descriptively. –  Alex Johnson May 16 '13 at 3:10

This library is pretty good also:

.NET random number generators and distributions

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+1 This looks promising. Thanks –  J.Hendrix Oct 26 '09 at 18:39

Sorry I don't have any code for you but I can point you to some algorithms on Wikipedia. The algorithm you choose I guess depends on how accurate you want it and how fast it needs to be.

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+1 This looks good too. How do I create the "two independent random numbers U and V uniformly distributed on (0, 1]"? Sorry... I told you my stats are weak. –  J.Hendrix Oct 26 '09 at 18:46
In C# you would use the "Random" class (msdn.microsoft.com/en-us/library/system.random.aspx). Specifically the method NextDouble returns a uniformly distributed number in the range of 0 to 1. Uniformly distributed just means that you have an equal chance of getting any of the numbers in the range, there is no bias towards any specific number. –  Martin Sherburn Oct 27 '09 at 8:53

For those referencing this question, an easy solution might be:

``````Random rand = new Random();
double normRand  = alglib.invnormaldistribution(rand.NextDouble())
``````

scale by mu and sigma as needed.
The alglib library is available at www.alglib.net

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The MetaNumerics library, also .NET, will calculate a normal distribution (and just about anything else from statistics), super quickly. Have a look at the Feature's page for more details. The Codeplex page is here: http://metanumerics.codeplex.com/.

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I know this post is a little old but I would like to share a small project I created yesterday. I think the easier way is to use C++ 11 and create a .dll in Managed C++. There's a link to the source and a zip containing the dll already compiled.

And the code I made :

``````// NormalDistributionRandom.h
#include <random>

#pragma once

using namespace System;

namespace NormalDistribution
{

class _NormalDistributionRandom
{
std::default_random_engine engine;
std::normal_distribution<double> distribution;

public:
_NormalDistributionRandom(double mean, double deviation) : distribution(mean, deviation)
{
}

double Next()
{
return distribution(engine);
}
};

public ref class NormalDistributionRandom
{
private:

void* Distribution;

public:

NormalDistributionRandom( double mean, double deviation)
{
Distribution = new _NormalDistributionRandom(mean, deviation);
}

double Next()
{
return ((_NormalDistributionRandom*)Distribution)->Next();
}
~NormalDistributionRandom()
{
this->!NormalDistributionRandom();
}
protected:
!NormalDistributionRandom()
{
if (Distribution != nullptr)
{
delete (_NormalDistributionRandom*)Distribution;
Distribution = nullptr;
}
}
};

}
``````
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