# Quantifying the non-randomness of a specialized random generator?

I just read this interesting question about a random number generator that never generates the same value three consecutive times. This clearly makes the random number generator different from a standard uniform random number generator, but I'm not sure how to quantitatively describe how this generator differs from a generator that didn't have this property.

Suppose that you handed me two random number generators, R and S, where R is a true random number generator and S is a true random number generator that has been modified to never produce the same value three consecutive times. If you didn't tell me which one was R or S, the only way I can think of to detect this would be to run the generators until one of them produced the same value three consecutive times.

My question is - is there a better algorithm for telling the two generators apart? Does the restriction of not producing the same number three times somehow affect the observable behavior of the generator in a way other than preventing three of the same value from coming up in a row?

• Are you defining S to be R but with rejection to prevent three consecutive values? Jul 1, 2011 at 17:50
• Yes. If there's a better way to do this, then let me know! Jul 1, 2011 at 17:55
• @PengOne- Wait, let me clarify that. I'm assuming that S is a truly random generator and that R is also a truly random generator that rejects outputs that would produce consecutive random values. This means that the sequences generated by S and R do not necessarily coincide with one another; because they exploit true randomness, they could produce entirely different sequences from one another. Jul 1, 2011 at 19:29
• If I were a black box that had a RNG, a PRNG, and a PRNG that that never generates the same value three consecutive times and you asked me to give you a set of "random" numbers with the only restriction being that I had to use the same source, could you tell which was used? I think if you knew which one I was using you might devise a means to answer the question. Jul 1, 2011 at 20:20

As a consequence of Rice's Theorem, there is no way to tell which is which.

Proof: Let L be the output of the normal RNG. Let L' be L, but with all sequences of length >= 3 removed. Some TMs recognize L', but some do not. Therefore, by Rice's theorem, determining if a TM accepts L' is not decidable.

As others have noted, you may be able to make an assertion like "It has run for N steps without repeating three times", but you can never make the leap to "it will never repeat a digit three times." More appropriately, there exists at least one machine for which you can't determine whether or not it meets this criterion.

Caveat: if you had a truly random generator (e.g. nuclear decay), it is possible that Rice's theorem would not apply. My intuition is that the theorem still holds for these machines, but I've never heard it discussed.

EDIT: a secondary proof. Suppose P(X) determines with high probability whether or not X accepts L'. We can construct an (infinite number of) programs F like:

F(x): if x(F), then don't accept L'
else, accept L'

P cannot determine the behavior of F(P). Moreover, say P correctly predicts the behavior of G. We can construct:

F'(x): if x(F'), then don't accept L'
else, run G(x)

So for every good case, there must exist at least one bad case.

• I'm not sure I see how Rice's theorem applies here. Rice's theorem talks about properties of RE languages, stating that no nontrivial property is decidable. Can you elaborate on how that would mean that there is no way to determine which is which? I think you might be on to something, but the leap from "is undecidable" to "no algorithm can find it with reasonable probability" is something I'm not sure I'm ready to make without more evidence. Jul 1, 2011 at 20:07
• @templatetypedef: I've added some details. You're right that undecidable != can't be determined with reasonable probability. I think you will need to define "reasonable probability" in a way which would require more theory than I know, unfortunately. Jul 1, 2011 at 20:28

If S is defined by rejecting from R, then a sequence produced by S will be a subsequence of the sequence produced by R. For example, taking a simple random variable X with equal probability of being 1 or 0, you would have:

R = 0 1 1 0 0 0 1 0 1
S = 0 1 1 0 0 1 0 1

The only real way to differentiate these two is to look for streaks. If you are generating binary numbers, then streaks are incredibly common (so much so that one can almost always differentiate between a random 100 digit sequence and one that a student writes down trying to be random). If the numbers are taken from [0,1] uniformly, then streaks are far less common.

It's an easy exercise in probability to calculate the chance of three consecutive numbers being equal once you know the distribution, or even better, the expected number of numbers needed until the probability of three consecutive equal numbers is greater than p for your favourite choice of p.

Since you defined that they only differ with respect to that specific property there is no better algorithm to distinguish those two.

If you do triples of randum values of course the generator S will produce all other triples slightly more often than R in order to compensate the missing triples (X,X,X). But to get a significant result you'd need much more data than it will cost you to find any value three consecutive times the first time.

Probably use ENT ( http://fourmilab.ch/random/ )

• Do you know any of the theory behind how ENT works? Or at least ar reference describing it? That's mostly what I'm interested in. Jul 1, 2011 at 19:55
• On the website I linked to, there is a list of all of the tests that they do and a brief rational of each. Jul 1, 2011 at 20:29