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I am reading this page : http://freespace.virgin.net/hugo.elias/models/m_perlin.htm where the following function is used to create random numbers with no explanation :

function IntNoise(32-bit integer: x)             

    x = (x<<13) ^ x;
    return ( 1.0 - ( (x * (x * x * 15731 + 789221) + 1376312589) & 7fffffff) / 1073741824.0);    

  end IntNoise function

Is there any way explanation as to why this generates "random" number, or any proof as to why the number generated are truly random (ie have a sufficiently high entropy)?

thanks

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2  
Nothing is truly random. Define sufficiently high. –  SLaks Feb 26 '12 at 23:52
1  
Personally I prefer rand() –  Flexo Feb 26 '12 at 23:52
2  
Why is this tagged C and C++? –  Carey Gregory Feb 26 '12 at 23:55
1  
You have used three different terms in your question: pseudo-random, truly random, and high entropy. Technically speaking, the only "entropy" that you will have when you use this function is the seed that you pass to it (32-bits). Everything else is deterministic. It is definitely not "truly random". I think this implies your question is open-ended and too discussiony for this QnA style and a better way to get an answer is to study up random number generation in textbooks. –  Mehrdad Afshari Feb 26 '12 at 23:57
3  
This code maps an input value (x) to a number that bears little obvious resemblance to that input. In that way, it's the moral equivalent of a rand function that takes a seed. Both are completely deterministic. –  Michael Petrotta Feb 26 '12 at 23:58
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1 Answer 1

up vote 3 down vote accepted

Like all PRNGs, the entropy output is bounded by the entropy input. So it is at least as non-random as rand() (which is not random at all).

George Marsaglia developed a suite of tests known as the "Diehard tests" (website, Wikipedia article) which test for certain useful properties of PRNGs, with the hope that any PRNGs with those properties is intuitively likely to be useful for whatever problem you need a PRNG for. You can run those tests on IntNoise, if you like.

It is likely that the IntNoise function you give is not good as a general purpose pseudorandom number generator. General purpose pseudorandom number generators are hard to come by, most people reuse the same few over and over again. However, IntNoise is stateless, which is a nice property and uncommon.

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