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Is there a class in the standard library of .NET that gives me the functionality to create random variables that follow Gaussian distribution?

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I would just like to add a mathematical result which isn't immediately useful for Normal distributions (due to complex CDF), but is useful for many other distributions. If you put uniformly distributed random numbers in [0,1] (with Random.NextDouble()) into the inverse of the CDF of ANY distribution, you will get random numbers that follow THAT distribution. If your application doesn't need precisely normally distributed variables, then the Logistic Distribution is a very close approximation to normal and has an easily invertible CDF. – Ozzah Nov 22 '12 at 23:53

10 Answers 10

up vote 85 down vote accepted

Jarrett's suggestion of using a Box-Muller transform is good for a quick-and-dirty solution. A simple implementation:

Random rand = new Random(); //reuse this if you are generating many
double u1 = rand.NextDouble(); //these are uniform(0,1) random doubles
double u2 = rand.NextDouble();
double randStdNormal = Math.Sqrt(-2.0 * Math.Log(u1)) *
             Math.Sin(2.0 * Math.PI * u2); //random normal(0,1)
double randNormal =
             mean + stdDev * randStdNormal; //random normal(mean,stdDev^2)
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I tested it and compared to MathNet's Mersenne Twister RNG and NormalDistribution. Your version is more than twice as fast and the end result is basically the same (visual inspection of the "bells"). – Johann Gerell Oct 22 '09 at 15:42
@Johann, if you're looking for pure speed, then the Zigorat Algorithm is generally recognised as the fastest approach. Furthermore the above approach can be made faster by carrying a value from one call to the next. – Drew Noakes Jan 4 '11 at 14:49
See the Java implementation for an example of carrying values between calls. It also avoids the need for trig operations. – Drew Noakes Jan 4 '11 at 14:52
Hi, what should the stdDev variable be set to? I understand that this can be configured to specific requirements, but are there any bounds (i.e. max/min values)? – hofnarwillie Aug 22 '13 at 9:05
@hofnarwillie stdDev is the scale parameter of the normal distribution, which can be any positive number. The larger it is, the more disperse the generated numbers will be. For a standard normal distribution use parameters mean=0 and stdDev=1. – yoyoyoyosef Aug 26 '13 at 21:14

This question appears to have moved on top of Google for .NET Gaussian generation, so I figured I'd post an answer.

I've made some extension methods for the .NET Random class, including an implementation of the Box-Muller transform. Since they're extensions, so long as the project is included (or you reference the compiled DLL), you can still do

var r = new Random();
var x = r.NextGaussian();

Hope nobody minds the shameless plug.

Sample histogram of results (a demo app for drawing this is included):

enter image description here

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Using two random variables, you can generate random values along a Gaussian distribution. It's not a difficult task at all.

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I created a request for such a feature on Microsoft Connect. If this is something you're looking for, please vote for it and increase its visibility.

This feature is included in the Java SDK. Its implementation is available as part of the documentation and is easily ported to C# or other .NET languages.

If you're looking for pure speed, then the Zigorat Algorithm is generally recognised as the fastest approach.

I'm not an expert on this topic though -- I came across the need for this while implementing a particle filter for my RoboCup 3D simulated robotic soccer library and was surprised when this wasn't included in the framework.

In the meanwhile, here's a wrapper for Random that provides an efficient implementation of the Box Muller polar method:

public sealed class GaussianRandom
    private bool _hasDeviate;
    private double _storedDeviate;
    private readonly Random _random;

    public GaussianRandom(Random random = null)
        _random = random ?? new Random();

    /// <summary>
    /// Obtains normally (Gaussian) distributed random numbers, using the Box-Muller
    /// transformation.  This transformation takes two uniformly distributed deviates
    /// within the unit circle, and transforms them into two independently
    /// distributed normal deviates.
    /// </summary>
    /// <param name="mu">The mean of the distribution.  Default is zero.</param>
    /// <param name="sigma">The standard deviation of the distribution.  Default is one.</param>
    /// <returns></returns>
    public double NextGaussian(double mu = 0, double sigma = 1)
        if (sigma <= 0)
            throw new ArgumentOutOfRangeException("sigma", "Must be greater than zero.");

        if (_hasDeviate)
            _hasDeviate = false;
            return _storedDeviate*sigma + mu;

        double v1, v2, rSquared;
            // two random values between -1.0 and 1.0
            v1 = 2*_random.NextDouble() - 1;
            v2 = 2*_random.NextDouble() - 1;
            rSquared = v1*v1 + v2*v2;
            // ensure within the unit circle
        } while (rSquared >= 1 || rSquared == 0);

        // calculate polar tranformation for each deviate
        var polar = Math.Sqrt(-2*Math.Log(rSquared)/rSquared);
        // store first deviate
        _storedDeviate = v2*polar;
        _hasDeviate = true;
        // return second deviate
        return v1*polar*sigma + mu;
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Math.NET Iridium also claims to implement "non-uniform random generators (normal, poisson, binomial, ...)".

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BUt its not working properly. Tried to plot it, Giving uniform random no. – Nikhil Chilwant May 22 '14 at 4:39

Math.NET provides this functionality. Here's how:

double mean = 100;
double stdDev = 10;

MathNet.Numerics.Distributions.Normal normalDist = new Normal(mean, stdDev);
double randomGaussianValue=   normalDist.Sample();

You can find documentation here:

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I'd like to expand upon @yoyoyoyosef's answer by making it even faster, and writing a wrapper class. The overhead incurred may not mean twice as fast, but I think it should be almost twice as fast. It isn't thread-safe, though.

public class Gaussian
     private bool _available;
     private double _nextGauss;
     private Random _rng;

     public Gaussian()
         _rng = new Random();

     public double RandomGauss()
        if (_available)
            _available = false;
            return _nextGauss;

        double u1 = _rng.NextDouble();
        double u2 = _rng.NextDouble();
        double temp1 = Math.Sqrt(-2.0*Math.Log(u1));
        double temp2 = 2.0*Math.PI*u2;

        _nextGauss = temp1 * Math.Sin(temp2);
        _available = true;
        return temp1*Math.Cos(temp2);

    public double RandomGauss(double mu, double sigma)
        return mu + sigma*RandomGauss();

    public double RandomGauss(double sigma)
        return sigma*RandomGauss();
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You could try Infer.NET. It's not commercial licensed yet though. Here is there link

It is a probabilistic framework for .NET developed my Microsoft research. They have .NET types for distributions of Bernoulli, Beta, Gamma, Gaussian, Poisson, and probably some more I left out.

It may accomplish what you want. Thanks.

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    // by Dan
    // islandTraderFX
    // copyright 2015
    // Siesta Key, FL
// 0.0  3231 ********************************
// 0.1  1981 *******************
// 0.2  1411 **************
// 0.3  1048 **********
// 0.4  810 ********
// 0.5  573 *****
// 0.6  464 ****
// 0.7  262 **
// 0.8  161 *
// 0.9  59 
//Total: 10000

//double g()
//    double res = 1000000;
//    return random.Next(0, (int)(res * random.NextDouble()) + 1) / res;
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This is my simple Box Muller inspired implementation. You can increase the resolution to fit your needs. This is very fast, simple, and works for my neural net apps which need an approximate Gaussian type of probability density function to get the job done. Hope it helps someone save time and CPU cycles. Although this works great for me, this is a limited range approximation, so keep in mind the tails are closed and finite, but certainly you can expand them as needed. – Daniel Howard Aug 21 '15 at 4:47

I don't think there is. And I really hope there isn't, as the framework is already bloated enough, without such specialised functionality filling it even more.

Take a look at and for a third party .NET solutions though.

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Since when is Gaussian distribution 'specialised'? It's far more general than, say, AJAX or DataTables. – TraumaPony Oct 20 '08 at 14:49
@TraumaPony: are you seriously trying to suggest more developers use Gaussian distribution than use AJAX on a regular basis? – David Arno Oct 20 '08 at 16:53
Possibly; what I'm saying is that it's far more specialised. It only has one use- web apps. Gaussian distributions have an incredible number of unrelated uses. – TraumaPony Oct 21 '08 at 2:34
@DavidArno, are you seriously suggesting less functionality improves a framework. – Jodrell Oct 3 '12 at 8:59
@Jodrell, to cite a specific example, I think the decision to make MVC a separate framework, rather than part of the main .NET framework, was a good one. – David Arno Oct 3 '12 at 13:24

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