# Converting a Uniform Distribution to a Normal Distribution

How can I convert a uniform distribution (as most random number generators produce, e.g. between 0.0 and 1.0) into a normal distribution? What if I want a mean and standard deviation of my choosing?

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Do you have a language specification, or is this just a general algorithm question? –  Bill the Lizard Sep 16 '08 at 19:08
General algorithm question. I don't care which language. But I would prefer that the answer not rely on specific functionality that only that language provides. –  Terhorst Sep 16 '08 at 19:12

Changing the distribution of any function to another involves using the inverse of the function you want.

In other words, if you aim for a specific probability function p(x) you get the distribution by integrating over it -> d(x) = integral(p(x)) and use its inverse: Inv(d(x)). Now use the random probability function (which have uniform distribution) and cast the result value through the function Inv(d(x)). You should get random values cast with distribution according to the function you chose.

This is the generic math approach - by using it you can now choose any probability or distribution function you have as long as it have inverse or good inverse approximation.

Hope this helped and thanks for the small remark about using the distribution and not the probability itself.

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+1 This is an overlooked method for generating gaussian variables which works very well. Inverse CDF can be efficiently computed with Newton method in this case (derivative is e^{-t^2}), an initial approximation is easy to get as a rational fraction, so you need 3-4 evaluations of erf and exp. It is mandatory if you use quasi-random numbers, a case where you must use exactly one uniform number to get a gaussian one. –  Alexandre C. Jul 16 '10 at 13:39
Note that you need to invert the cumulative distribution function, not the probability distribution function. Alexandre implies this, but I thought mentioning it more explicitly might not hurt - since the answer seems to suggest the PDF –  ltjax Aug 30 '12 at 15:53
You can use the PDF if you're prepared to randomly select a direction relative to the mean; do I understand that right? –  Mark McKenna Sep 28 '14 at 21:43

Approximation:

``````function rnd_snd() {
return (Math.random()*2-1)+(Math.random()*2-1)+(Math.random()*2-1);
}
``````
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This is just plain wrong. The sum of uniform random variables is just a 1-d random walk using a uniform random input distribution. –  Shane Holloway May 24 '13 at 22:18

I thing you should try this in EXCEL: `=norminv(rand();0;1)`. This will product the random numbers which should be normally distributed with the zero mean and unite variance. "0" can be supplied with any value, so that the numbers will be of desired mean, and by changing "1", you will get the variance equal to the square of your input.

For example: `=norminv(rand();50;3)` will yield to the normally distributed numbers with MEAN = 50 VARIANCE = 9.

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Where R1, R2 are random uniform numbers:

NORMAL DISTRIBUTION, with SD of 1: sqrt(-2*log(R1))*cos(2*pi*R2)

This is exact... no need to do all those slow loops!

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Before someone corrected me... here's the approximation I came up with: (1.5-(R1+R2+R3))*1.88. I like it too. –  Erik Aronesty Oct 14 '11 at 17:56

There are plenty of methods:

• Do not use Box Muller. Especially if you draw many gaussian numbers. Box Muller yields a result which is clamped between -6 and 6 (assuming double precision. Things worsen with floats.). And it is really less efficient than other available methods.
• Ziggurat is fine, but needs a table lookup (and some platform-specific tweaking due to cache size issues)
• Ratio-of-uniforms is my favorite, only a few addition/multiplications and a log 1/50th of the time (eg. look there).
• Inverting the CDF is efficient (and overlooked, why ?), you have fast implementations of it available if you search google. It is mandatory for Quasi-Random numbers.
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Are you sure about the [-6,6] clamping? This a pretty significant point if true (and worthy of a note on the wikipedia page). –  locster Aug 24 '11 at 22:31
@locster: this is what a teacher of mine told me (he studied such generators, and I trust his word). I may be able to find you a reference. –  Alexandre C. Aug 25 '11 at 6:56
@locster: this undesirable property is also shared by the inverse CDF method. See cimat.mx/~src/prope08/randomgauss.pdf . This can be alleviated by using a uniform RNG which has non zero probability to yield a floating point number very close to zero. Most RNG do not, since they generate a (typically 64 bit) integer which is then mapped to [0,1]. This makes those methods unsuitable for sampling tails of gaussian variables (think of pricing low/high strike options in computational finance). –  Alexandre C. Aug 25 '11 at 7:20
Indeed, consider x1 = 1/(2^32-1) (smallest random number greater than zero, generated with 32-bit integer) and x2 = 0. Then random = sqrt(-2 ln(1/(2^32-1))) * cos(2 * pi * 0) = 6.6604. With 64-bit random number generator this is about 9.419. –  the swine Nov 18 '13 at 17:18

Here is a javascript implementation using the polar form of the Box-Muller transformation.

``````/*
* Returns member of set with a given mean and standard deviation
* mean: mean
* standard deviation: std_dev
*/
function createMemberInNormalDistribution(mean,std_dev){
return mean + (gaussRandom()*std_dev);
}

/*
* Returns random number in normal distribution centering on 0.
* ~95% of numbers returned should fall between -2 and 2
*/
function gaussRandom() {
var u = 2*Math.random()-1;
var v = 2*Math.random()-1;
var r = u*u + v*v;
/*if outside interval [0,1] start over*/
if(r == 0 || r > 1) return gaussRandom();

var c = Math.sqrt(-2*Math.log(r)/r);
return u*c;

/* todo: optimize this algorithm by caching (v*c)
* and returning next time gaussRandom() is called.
* left out for simplicity */
}
``````
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Use the central limit theorem wikipedia entry mathworld entry to your advantage.

Generate n of the uniformly distributed numbers, sum them, subtract n*0.5 and you have the output of an approximately normal distribution with mean equal to 0 and variance equal to `(1/12) * (1/sqrt(N))` (see wikipedia on uniform distributions for that last one)

n=10 gives you something half decent fast. If you want something more than half decent go for tylers solution (as noted in the wikipedia entry on normal distributions)

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This won't give a particularly close normal (the "tails" or end-points will not be close to the real normal distribution). Box-Muller is better, as others have suggested. –  Peter K. Oct 15 '08 at 2:39
Box Muller has wrong tails too (it returns a number between -6 and 6 in double precision) –  Alexandre C. Jul 16 '10 at 13:17
``````function distRandom(){
do{
x=random(DISTRIBUTION_DOMAIN);
}while(random(DISTRIBUTION_RANGE)>=distributionFunction(x));
return x;
}
``````
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Not guaranteed to return, though, is it? ;-) –  Peter K. Oct 15 '08 at 2:43
it returns almost surely. –  Alexandre C. Jul 16 '10 at 13:19
Random numbers are too important to be left to chance. –  Drew Noakes Jan 3 '11 at 5:59
Doesn't answer the question -- the normal distribution has an infinite domain. –  Matt Oct 19 '13 at 15:04

The standard Python library module random has what you want:

normalvariate(mu, sigma)
Normal distribution. mu is the mean, and sigma is the standard deviation.

For the algorithm itself, take a look at the function in random.py in the Python library.

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Unfortunately, python's library uses Kinderman,A.J. and Monahan, J.F., "Computer generation of random variables using the ratio of uniform deviates", ACM Trans Math Software, 3, (1977), pp257-260. This uses two uniform random variables to generate the normal value, rather than a single one, so it isn't obvious how to use it as the mapping that the OP wanted. –  Ian Apr 4 '11 at 17:27

1. You end up with two values per iteration
Typically, you cache one value and return the other. On the next call for a sample, you return the cached value.
2. Box-Muller gives a Z-score
You have to then scale the Z-score by the standard deviation and add the mean to get the full value in the normal distribution.
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How do you scale the Z-score? –  Terhorst Sep 16 '08 at 19:18
scaled = mean + stdDev * zScore // gives you normal(mean,stdDev^2) –  yoyoyoyosef Oct 20 '08 at 14:31

The Ziggurat algorithm is pretty efficient for this, although the Box-Muller transform is easier to implement from scratch (and not crazy slow).

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The usual warnings about linear congruent generators apply to both these methods, so use a decent underling generator. Cheers. –  dmckee Sep 16 '08 at 19:02
Such as Mersenee Twister, or do you have other suggestions? –  Gregg Lind Sep 18 '08 at 21:19