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Given an array of size n I want to generate random probabilities for each index such that Sigma(a[0]..a[n-1])=1

One possible result might be:

0     1     2     3     4
0.15  0.2   0.18  0.22  0.25

Another perfectly legal result can be:

0     1     2     3     4
0.01  0.01  0.96  0.01  0.01

How can I generate these easily and quickly? Answers in any language are fine, Java preferred.

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By sigma you mean standard deviation? I hope you realize that as soon as you say standard deviation you automatically imply you are drawing your random numbers from the normal distribution. –  ldog Jan 31 '10 at 10:17
    
Most computer RNG's draw numbers from the uniform distribution. –  ldog Jan 31 '10 at 10:18
    
You can side step this issue by realizing that the Central Limit theorem can help: en.wikipedia.org/wiki/Central_limit_theorem –  ldog Jan 31 '10 at 10:18
    
i.e. what you want to do to draw 1 number from your normal distribution is to sample N numbers from the RNG uniform distribution and take their average to produce one random "normal" value, where N is large enough to suite your needs (preferably N > 1 which is what you are doing now.) –  ldog Jan 31 '10 at 10:20
1  
@gmatt: No, he means "sum," look at his examples –  BlueRaja - Danny Pflughoeft Feb 1 '10 at 18:48

3 Answers 3

up vote 9 down vote accepted

The task you are trying to accomplish is tantamount to drawing a random point from the N-dimensional unit simplex.

http://en.wikipedia.org/wiki/Simplex#Random_sampling might help you.

A naive solution might go as following:

public static double[] getArray(int n)
    {
        double a[] = new double[n];
        double s = 0.0d;
        Random random = new Random();
        for (int i = 0; i < n; i++)
        {
           a [i] = 1.0d - random.nextDouble();
           a [i] = -1 * Math.log(a[i]);
           s += a[i];
        }
        for (int i = 0; i < n; i++)
        {
           a [i] /= s;
        }
        return a;
    }

To draw a point uniformly from the N-dimensional unit simplex, we must take a vector of exponentially distributed random variables, then normalize it by the sum of those variables. To get an exponentially distributed value, we take a negative log of uniformly distributed value.

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3  
In most languages, you should create Random only once, or you will get not random results (and in many cases - the same number over and over). I'm also concerned about the use of log - can you please explain why it's there? –  Kobi Jan 31 '10 at 9:41
    
+1 for good reference, but I think nextDouble() already adjusts for uniform distribution: java.sun.com/javase/6/docs/api/java/util/… –  trashgod Jan 31 '10 at 19:29
    
Kobi, thanks for pointing out the new Random() thing. As for log -- I have edited my post to include more thorough explanation. –  viaclectic Jan 31 '10 at 19:50
    
trashgod, nextDouble() returns an uniformly distributed value from [0,1). So when we take n such values, we get a random point in a parallelotope. If we divide this point's coordinates by Manhattan distance between this point and the origin, I'm quite unsure that we'll get an uniformly distributed point in the unit simplex. –  viaclectic Jan 31 '10 at 19:51
    
thank you for clarifying; the algorithm presumes uniform distribution and uses -ln to get the required exponential distribution. –  trashgod Feb 1 '10 at 3:56

Get n random numbers, calculate their sum and normalize the sum to 1 by dividing each number with the sum.

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Nice :) didn't think of that... תודה! –  Yuval Adam Jan 31 '10 at 9:04
8  
This introduces bias. You cannot sample uniformly from a simplex this way. –  dreeves Jun 9 '10 at 18:54
    
@dreeves - can you elaborate? –  Yuval Adam Jun 9 '10 at 19:36
1  
Figure 2 of this paper -- cs.cmu.edu/~nasmith/papers/smith+tromble.tr04.pdf -- gives a visual depiction of the bias in the n=3 case of the normalization method you propose. I believe that kohomologie's answer is correct (though I didn't check the code they included). –  dreeves Jun 9 '10 at 23:30

If you want to generate values from a normal distribution efficiently, try the Box Muller Transformation.

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Good tip, but I believe it isn't germane. –  dreeves Jun 9 '10 at 18:55

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