Expand a random range from 1–5 to 1–7

Given a function which produces a random integer in the range 1 to 5, write a function which produces a random integer in the range 1 to 7.

1. What is a simple solution?
2. What is an effective solution to reduce memory usage or run on a slower CPU?
-
Honest downvoters would comment why. This question doesn't suck - it exposes common fallacies about "random". –  Brent.Longborough Sep 26 '08 at 4:48
I don't care if it was a homework question. It gave me food for thought. –  Brent.Longborough Sep 26 '08 at 5:12
"if people want to leave comments, they can; forcing them won't achieve anything except prevent participation" –  mafu May 4 '09 at 5:46
How come this guy has more reputation than me when he's just posted 2 homework questions (apart from the possibilities of my contributions to SO being crap)? –  Dave Arkell Jun 1 '09 at 14:22
@Dave Arkell: Because of stackoverflow.com/questions/130654/…. Your questions are not silly enough. If you want to gain substantial reputation (do you really want it?), you need to ask or answer a silly or broad question, or something simple enough so that everyone can understand it. (In marketing terms, you need to aim at the mass market) –  Suma Jun 16 '09 at 11:14

This is equivalent to Adam Rosenfield's solution, but may be a bit more clear for some readers. It assumes rand5() is a function that returns a statistically random integer in the range 1 through 5 inclusive.

``````int rand7()
{
int vals[5][5] = {
{ 1, 2, 3, 4, 5 },
{ 6, 7, 1, 2, 3 },
{ 4, 5, 6, 7, 1 },
{ 2, 3, 4, 5, 6 },
{ 7, 0, 0, 0, 0 }
};

int result = 0;
while (result == 0)
{
int i = rand5();
int j = rand5();
result = vals[i-1][j-1];
}
return result;
}
``````

How does it work? Think of it like this: imagine printing out this double-dimension array on paper, tacking it up to a dart board and randomly throwing darts at it. If you hit a non-zero value, it's a statistically random value between 1 and 7, since there are an equal number of non-zero values to choose from. If you hit a zero, just keep throwing the dart until you hit a non-zero. That's what this code is doing: the i and j indexes randomly select a location on the dart board, and if we don't get a good result, we keep throwing darts.

Like Adam said, this can run forever in the worst case, but statistically the worst case never happens. :)

-
Nice... this is a much easier way to visualize what's happening in other solutions. –  greg7gkb Jun 11 '09 at 6:02
Great visualization! –  Dinah Jun 23 '09 at 13:40
good for visualisation, but not particularly scalable... –  David_001 Feb 27 '10 at 9:00

There is no (exactly correct) solution which will run in a constant amount of time, since 1/7 is an infinite decimal in base 5. One simple solution would be to use rejection sampling, e.g.:

``````
int i;
do
{
i = 5 * (rand5() - 1) + rand5();  // i is now uniformly random between 1 and 25
} while(i > 21);
// i is now uniformly random between 1 and 21
return i % 7 + 1;  // result is now uniformly random between 1 and 7
``````

This has an expected runtime of 25/21 = 1.19 iterations of the loop, but there is an infinitesimally small probability of looping forever.

-
the -1 is not needed if the >21 is flipped to >26 b/c it doesn't matter where i's lower bound maps to, –  BCS Jan 15 '09 at 18:01
Uh, can anyone explain how this really works and produces a uniform distribution? The Wikipedia page on rejection sampling was not of much help. –  sundar May 4 '09 at 5:50
My take on explaining why this is correct: Say that I want to write a program that outputs a stream of uniform random numbers from1 to 25; for that I'd just return 5 * (rand5() - 1) + rand5() as in the code in the answer. Now, if I want to build a stream of uniform random numbers between 1 and 21, if I just use the first stream but filter it so that numbers in [22, 25] are rejected, I can build that stream too. Next, if I take this stream and filter it so that for each element x I output x % 7 + 1, I have a stream of uniform random numbers from 1 to 7! Quite simple, isn't it? :D –  Paggas May 5 '09 at 6:14
And you're correct that it boils down to whether you want a perfect distribution with unbounded worst case runtime, or an imperfect distribution with a bounded runtime. This is a consequence of the fact that all powers 5 not divisible by 7, or equivalently if you have 5^n equally probably sequences of length n, there is no way to assign to each sequence a number from 1 to 7 such that each of 1..7 is equally probably. –  Adam Rosenfield May 8 '09 at 4:27
@Jules Olléon: Suppose there were a solution running in constant time that was guaranteed to make no more than `N` calls to `rand5()` in the worst case. Then, there are 5^N possible outcomes of the sequence of calls to `rand5`, each of which has an output of 1-7. So, if you add up all of the possible sequences of calls whose output is `k` for each 1≤k≤7, then the probability that the output is `k` is m/5^N, where m is the number of such sequences. So, m/5^N = 1/7, but there are no possible integer solutions (N,m) to this ==> contradiction. –  Adam Rosenfield Jan 30 '11 at 19:45

I'd like to add another answer, in addition to my first answer. This answer attempts to minimize the number of calls to `rand5()` per call to `rand7()`, to maximize the usage of randomness. That is, if you consider randomness to be a precious resource, we want to use as much of it as possible, without throwing away any random bits. This answer also has some similarities with the logic presented in Ivan's answer.

The entropy of a random variable is a well-defined quantity. For a random variable which takes on N states with equal probabilities (a uniform distribution), the entropy is log2 N. Thus, `rand5()` has approximately 2.32193 bits of entropy, and `rand7()` has about 2.80735 bits of entropy. If we hope to maximize our use of randomness, we need to use all 2.32193 bits of entropy from each call to `rand5()`, and apply them to generating 2.80735 bits of entropy needed for each call to `rand7()`. The fundamental limit, then, is that we can do no better than log(7)/log(5) = 1.20906 calls to `rand5()` per call to `rand7()`.

Side notes: all logarithms in this answer will be base 2 unless specified otherwise. `rand5()` will be assumed to return numbers in the range [0, 4], and `rand7()` will be assumed to return numbers in the range [0, 6]. Adjusting the ranges to [1, 5] and [1, 7] respectively is trivial.

So how do we do it? We generate an infinitely precise random real number between 0 and 1 (pretend for the moment that we could actually compute and store such an infinitely precise number -- we'll fix this later). We can generate such a number by generating its digits in base 5: we pick the random number 0.`a`1`a`2`a`3..., where each digit a`i` is chosen by a call to `rand5()`. For example, if our RNG chose a`i` = 1 for all `i`, then ignoring the fact that that isn't very random, that would correspond to the real number 1/5 + 1/52 + 1/53 + ... = 1/4 (sum of a geometric series).

Ok, so we've picked a random real number between 0 and 1. I now claim that such a random number is uniformly distributed. Intuitively, this is easy to understand, since each digit was picked uniformly, and the number is infinitely precise. However, a formal proof of this is somewhat more involved, since now we're dealing with a continuous distribution instead of a discrete distribution, so we need to prove that the probability that our number lies in an interval [`a`, `b`] equals the length of that interval, `b - a`. The proof is left as an exercise for the reader =).

Now that we have a random real number selected uniformly from the range [0, 1], we need to convert it to a series of uniformly random numbers in the range [0, 6] to generate the output of `rand7()`. How do we do this? Just the reverse of what we just did -- we convert it to an infinitely precise decimal in base 7, and then each base 7 digit will correspond to one output of `rand7()`.

Taking the example from earlier, if our `rand5()` produces an infinite stream of 1's, then our random real number will be 1/4. Converting 1/4 to base 7, we get the infinite decimal 0.15151515..., so we will produce as output 1, 5, 1, 5, 1, 5, etc.

Ok, so we have the main idea, but we have two problems left: we can't actually compute or store an infinitely precise real number, so how do we deal with only a finite portion of it? Secondly, how do we actually convert it to base 7?

One way we can convert a number between 0 and 1 to base 7 is as follows:

1. Multiply by 7
2. The integral part of the result is the next base 7 digit
3. Subtract off the integral part, leaving only the fractional part
4. Goto step 1

To deal with the problem of infinite precision, we compute a partial result, and we also store an upper bound on what the result could be. That is, suppose we've called `rand5()` twice and it returned 1 both times. The number we've generated so far is 0.11 (base 5). Whatever the rest of the infinite series of calls to `rand5()` produce, the random real number we're generating will never be larger than 0.12: it is always true that 0.11 ≤ 0.11xyz... < 0.12.

So, keeping track of the current number so far, and the maximum value it could ever take, we convert both numbers to base 7. If they agree on the first `k` digits, then we can safely output the next `k` digits -- regardless of what the infinite stream of base 5 digits are, they will never affect the next `k` digits of the base 7 representation!

And that's the algorithm -- to generate the next output of `rand7()`, we generate only as many digits of `rand5()` as we need to ensure that we know with certainty the value of the next digit in the conversion of the random real number to base 7. Here is a Python implementation, with a test harness:

``````import random

rand5_calls = 0
def rand5():
global rand5_calls
rand5_calls += 1
return random.randint(0, 4)

def rand7_gen():
state = 0
pow5 = 1
pow7 = 7
while True:
if state / pow5 == (state + pow7) / pow5:
result = state / pow5
state = (state - result * pow5) * 7
pow7 *= 7
yield result
else:
state = 5 * state + pow7 * rand5()
pow5 *= 5

if __name__ == '__main__':
r7 = rand7_gen()
N = 10000
x = list(next(r7) for i in range(N))
distr = [x.count(i) for i in range(7)]
expmean = N / 7.0
expstddev = math.sqrt(N * (1.0/7.0) * (6.0/7.0))

print '%d TRIALS' % N
print 'Expected mean: %.1f' % expmean
print 'Expected standard deviation: %.1f' % expstddev
print
print 'DISTRIBUTION:'
for i in range(7):
print '%d: %d   (%+.3f stddevs)' % (i, distr[i], (distr[i] - expmean) / expstddev)
print
print 'Calls to rand5: %d (average of %f per call to rand7)' % (rand5_calls, float(rand5_calls) / N)
``````

Note that `rand7_gen()` returns a generator, since it has internal state involving the conversion of the number to base 7. The test harness calls `next(r7)` 10000 times to produce 10000 random numbers, and then it measures their distribution. Only integer math is used, so the results are exactly correct.

Also note that the numbers here get very big, very fast. Powers of 5 and 7 grow quickly. Hence, performance will start to degrade noticeably after generating lots of random numbers, due to bignum arithmetic. But remember here, my goal was to maximize the usage of random bits, not to maximize performance (although that is a secondary goal).

In one run of this, I made 12091 calls to `rand5()` for 10000 calls to `rand7()`, achieving the minimum of log(7)/log(5) calls on average to 4 significant figures, and the resulting output was uniform.

In order to port this code to a language that doesn't have arbitrarily large integers built-in, you'll have to cap the values of `pow5` and `pow7` to the maximum value of your native integral type -- if they get too big, then reset everything and start over. This will increase the average number of calls to `rand5()` per call to `rand7()` very slightly, but hopefully it shouldn't increase too much even for 32- or 64-bit integers.

-
+1 for a really interesting answer. Would it be possible, rather than resetting at a certain value, to simply shift off bits that have been used, and move the other bits up, and basically only keeping the bits that are going to be used? Or am I missing something? –  Chris Lutz May 21 '09 at 3:54
I'm not 100% sure, but I believe if you did that, you would skew the distribution ever so slightly (although I doubt that such skew would be measurable without trillions of trials). –  Adam Rosenfield May 21 '09 at 4:44
+1 Very interesting answer. –  Nixuz Jul 1 '09 at 0:59
Very nice! Can we retain the extra entropy without growing state? The trick is to notice that both upper- and lower- bounds are at all times rational numbers. We can add, subtract, and multiply these without losing precision. If we do it all in base-35, we're nearly there. The remainder (multiplying by seven and retaining the fractional part) is left as an exercise. –  Ian Aug 14 '11 at 8:27

Assume that rand5() returns one of {0,1,2,3,4} with equal distribution and the goal is return {0,1,2,3,4,5,6} with equal distribution.

``````int rand7() {
i = 5 * rand5() + rand5();
max = 25;
//i is uniform among {0 ... max-1}
while(i < max%7) {
//i is uniform among {0 ... (max%7 - 1)}
i *= 5;
i += rand5(); //i is uniform {0 ... (((max%7)*5) - 1)}
max %= 7;
max *= 5; //once again, i is uniform among {0 ... max-1}
}
return(i%7);
}
``````

We're keeping track of the largest value that the loop can make in the variable `max`. If the reult so far is between max%7 and max-1 then the result will be uniformly distrubuted in that range. If not, we use the remainder, which is random between 0 and max%7-1, and another call to rand() to make a new number and a new max. Then we start again.

Edit: Expect number of times to call rand5() is x in this equation:

``````x =  2     * 21/25
+ 3     *  4/25 * 14/20
+ 4     *  4/25 *  6/20 * 28/30
+ 5     *  4/25 *  6/20 *  2/30 * 7/10
+ 6     *  4/25 *  6/20 *  2/30 * 3/10 * 14/15
+ (6+x) *  4/25 *  6/20 *  2/30 * 3/10 *  1/15
x = about 2.21 calls to rand5()
``````
-
Results cataloged in 1,000,000 tries: 1=47216; 2=127444; 3=141407; 4=221453; 5=127479; 6=167536; 7=167465. As you can see, distribution is lacking in respect to the odds of getting a 1. –  Robert K Jun 1 '09 at 14:02
@The Wicked Flea: I think you're mistaken. Are you sure that the input rand5() you were using for your test produced 0-4 instead of 1-5, as specified in this solution? –  Adam Rosenfield Jun 10 '09 at 0:38
adding uniformly distributed numbers does not result in a uniformly distributed number. In fact, you only need to sum 6 such uniformly distributed variables to get a reasonable approximation to a normal distribution. –  Mitch Wheat Feb 15 '13 at 8:12
``````int randbit( void )
{
while( 1 )
{
int r = rand5();
if( r <= 4 ) return(r & 1);
}
}

int randint( int nbits )
{
int result = 0;
while( nbits-- )
{
result = (result<<1) | randbit();
}
return( result );
}

int rand7( void )
{
while( 1 )
{
int r = randint( 3 ) + 1;
if( r <= 7 ) return( r );
}
}
``````
-
A correct solution, making an average of 30/7 = 4.29 calls to rand5() per call to rand7(). –  Adam Rosenfield May 8 '09 at 3:30
``````rand7() = (rand5()+rand5()+rand5()+rand5()+rand5()+rand5()+rand5())%7+1
``````

Edit: That doesn't quite work. It's off by about 2 parts in 1000 (assuming a perfect rand5). The buckets get:

``````value   Count  Error%
1       11158  -0.0035
2       11144  -0.0214
3       11144  -0.0214
4       11158  -0.0035
5       11172  +0.0144
6       11177  +0.0208
7       11172  +0.0144
``````

By switching to a sum of

``````n   Error%
10  +/- 1e-3,
12  +/- 1e-4,
14  +/- 1e-5,
16  +/- 1e-6,
...
28  +/- 3e-11
``````

seems to gain an order of magnitude for every 2 added

BTW: the table of errors above was not generated via sampling but by the following recurrence relation:

`p[x,n]` is the number ways `output=x` can happen given `n` calls to `rand5`.

``````  p[1,1] ... p[5,1] = 1
p[6,1] ... p[7,1] = 0

p[1,n] = p[7,n-1] + p[6,n-1] + p[5,n-1] + p[4,n-1] + p[3,n-1]
p[2,n] = p[1,n-1] + p[7,n-1] + p[6,n-1] + p[5,n-1] + p[4,n-1]
p[3,n] = p[2,n-1] + p[1,n-1] + p[7,n-1] + p[6,n-1] + p[5,n-1]
p[4,n] = p[3,n-1] + p[2,n-1] + p[1,n-1] + p[7,n-1] + p[6,n-1]
p[5,n] = p[4,n-1] + p[3,n-1] + p[2,n-1] + p[1,n-1] + p[7,n-1]
p[6,n] = p[5,n-1] + p[4,n-1] + p[3,n-1] + p[2,n-1] + p[1,n-1]
p[7,n] = p[6,n-1] + p[5,n-1] + p[4,n-1] + p[3,n-1] + p[2,n-1]
``````
-
This is not a uniform distribution. It's very close to uniform, but not perfectly uniform. –  Adam Rosenfield Jan 15 '09 at 18:06
Not a uniform distribution. –  Jason S Jan 24 '09 at 20:07
The proof that it's not uniform is simple: there are 5^7 possible ways the randomness can go, and as 5^7 is not a multiple of 7, it's not possible that all 7 sums are equally likely. (Basically, it boils down to 7 being relatively prime to 5, or equivalently 1/7 not being a terminating decimal in base 5.) In fact it's not even the "most uniform" possible under this constraint: direct computation shows that of the 5^7=78125 sums, the number of times you get values 1 to 7 is {1: 11145, 2: 11120, 3: 11120, 4: 11145, 5: 11190, 6: 11215, 7: 11190}. –  ShreevatsaR Apr 30 '09 at 16:05
``````int ans = 0;
while (ans == 0)
{
for (int i=0; i<3; i++)
{
while ((r = rand5()) == 3){};
ans += (r < 3) >> i
}
}
``````
-
A correct solution, making an average of 30/7 = 4.29 calls to rand5() per call to rand7(). –  Adam Rosenfield May 8 '09 at 4:12

The following produces a uniform distribution on {1, 2, 3, 4, 5, 6, 7} using a random number generator producing a uniform distribution on {1, 2, 3, 4, 5}. The code is messy, but the logic is clear.

``````public static int random_7(Random rg) {
int returnValue = 0;
while (returnValue == 0) {
for (int i = 1; i <= 3; i++) {
returnValue = (returnValue << 1) + SimulateFairCoin(rg);
}
}
return returnValue;
}

private static int SimulateFairCoin(Random rg) {
while (true) {
int flipOne = random_5_mod_2(rg);
int flipTwo = random_5_mod_2(rg);

if (flipOne == 0 && flipTwo == 1) {
return 0;
}
else if (flipOne == 1 && flipTwo == 0) {
return 1;
}
}
}

private static int random_5_mod_2(Random rg) {
return random_5(rg) % 2;
}

private static int random_5(Random rg) {
return rg.Next(5) + 1;
}
``````
-
A correct solution (which puts you way ahead of the curve), although not very efficient. This makes an average of 25/6 = 4.17 calls to random_5_mod_2 per fair coin flip, for a total average of 100/7 = 14.3 calls to random_5() per call to random_7(). –  Adam Rosenfield May 8 '09 at 3:28
possible infinite loops, etc. –  robermorales Sep 21 '11 at 7:28

If we consider the additional constraint of trying to give the most efficient answer i.e one that given an input stream, `I`, of uniformly distributed integers of length `m` from 1-5 outputs a stream `O`, of uniformly distributed integers from 1-7 of the longest length relative to `m`, say `L(m)`.

The simplest way to analyse this is to treat the streams I and `O` as 5-ary and 7-ary numbers respectively. This is achieved by the main answer's idea of taking the stream `a1, a2, a3,... -> a1+5*a2+5^2*a3+..` and similarly for stream `O`.

Then if we take a section of the input stream of length `m choose n s.t. 5^m-7^n=c` where `c>0` and is as small as possible. Then there is a uniform map from the input stream of length m to integers from `1` to `5^m` and another uniform map from integers from 1 to `7^n` to the output stream of length n where we may have to lose a few cases from the input stream when the mapped integer exceeds `7^n`.

So this gives a value for `L(m)` of around `m (log5/log7)` which is approximately `.82m`.

The difficulty with the above analysis is the equation `5^m-7^n=c` which is not easy to solve exactly and the case where the uniform value from `1` to `5^m` exceeds `7^n` and we lose efficiency.

The question is how close to the best possible value of m (log5/log7) can be attain. For example when this number approaches close to an integer can we find a way to achieve this exact integral number of output values?

If `5^m-7^n=c` then from the input stream we effectively generate a uniform random number from `0` to `(5^m)-1` and don't use any values higher than `7^n`. However these values can be rescued and used again. They effectively generate a uniform sequence of numbers from 1 to `5^m-7^n`. So we can then try to use these and convert them into 7-ary numbers so that we can create more output values.

If we let `T7(X)` to be the average length of the output sequence of `random(1-7)` integers derived from a uniform input of size `X`, and assuming that `5^m=7^n0+7^n1+7^n2+...+7^nr+s, s<7`.

Then `T7(5^m)=n0x7^n0/5^m + ((5^m-7^n0)/5^m) T7(5^m-7^n0)` since we have a length no sequence with probability 7^n0/5^m with a residual of length `5^m-7^n0` with probability `(5^m-7^n0)/5^m)`.

If we just keep substituting we obtain:

``````T7(5^m) = n0x7^n0/5^m + n1x7^n1/5^m + ... + nrx7^nr/5^m  = (n0x7^n0 + n1x7^n1 + ... + nrx7^nr)/5^m
``````

Hence

``````L(m)=T7(5^m)=(n0x7^n0 + n1x7^n1 + ... + nrx7^nr)/(7^n0+7^n1+7^n2+...+7^nr+s)
``````

Another way of putting this is:

``````If 5^m has 7-ary representation `a0+a1*7 + a2*7^2 + a3*7^3+...+ar*7^r
Then L(m) = (a1*7 + 2a2*7^2 + 3a3*7^3+...+rar*7^r)/(a0+a1*7 + a2*7^2 + a3*7^3+...+ar*7^r)
``````

The best possible case is my original one above where `5^m=7^n+s`, where `s<7`.

Then `T7(5^m) = nx(7^n)/(7^n+s) = n+o(1) = m (Log5/Log7)+o(1)` as before.

The worst case is when we can only find k and s.t 5^m = kx7+s.

``````Then T7(5^m) = 1x(k.7)/(k.7+s) = 1+o(1)
``````

Other cases are somewhere inbetween. It would be interesting to see how well we can do for very large m, i.e. how good can we get the error term:

``````T7(5^m) = m (Log5/Log7)+e(m)
``````

It seems impossible to achieve `e(m) = o(1)` in general but hopefully we can prove `e(m)=o(m)`.

The whole thing then rests on the distribution of the 7-ary digits of `5^m` for various values of `m`.

I'm sure there is a lot of theory out there that covers this I may have a look and report back at some point.

-
show 1 more comment

Algorithm:

7 can be represented in a sequence of 3 bits

Use rand(5) to randomly fill each bit with 0 or 1.
For e.g: call rand(5) and

if the result is 1 or 2, fill the bit with 0
if the result is 4 or 5, fill the bit with 1
if the result is 3 , then ignore and do it again (rejection)

This way we can fill 3 bits randomly with 0/1 and thus get a number from 1-7.

EDIT: This seems like the simplest and most efficient answer, so here's some code for it:

``````public static int random_7() {
int returnValue = 0;
while (returnValue == 0) {
for (int i = 1; i <= 3; i++) {
returnValue = (returnValue << 1) + random_5_output_2();
}
}
return returnValue;
}

private static int random_5_output_2() {
while (true) {
int flip = random_5();

if (flip < 3) {
return 0;
}
else if (flip > 3) {
return 1;
}
}
}
``````
-
There always the faint spectre of the halting problem, since a poor random number generator could just generate a lot of threes at some point. –  Alex North-Keys Apr 18 '12 at 13:31
show 1 more comment

Why not do it simple?

``````int random7() {
return random5() + (random5() % 3);
}
``````

The chances of getting 1 and 7 in this solution is lower due to the modulo, however, if you just want a quick and readable solution, this is the way to go.

-
This does not produce a uniform distribution. This produces the numbers 0-6 with probabilities 2/25, 4/25, 5/25, 5/25, 5/25, 3/25, 1/25, as can be verified by counting all 25 possible outcomes. –  Adam Rosenfield Dec 5 '09 at 3:40

Are homework problems allowed here?

This function does crude "base 5" math to generate a number between 0 and 6.

``````function rnd7() {
do {
r1 = rnd5() - 1;
do {
r2=rnd5() - 1;
} while (r2 > 1);
result = r2 * 5 + r1;
} while (result > 6);
return result + 1;
}
``````
-
They are allowed. –  mafu May 4 '09 at 5:50
A correct solution (which puts you way ahead of the curve), although not very efficient. This makes an average of 5 calls to rnd5() for each call to rnd7(). –  Adam Rosenfield May 8 '09 at 3:24

``````import random

def rand5():
return random.randint(1, 5)

def rand7():
while True:
r = 5 * (rand5() - 1) + rand5()
#r is now uniformly random between 1 and 25
if (r <= 21):
break
#result is now uniformly random between 1 and 7
return r % 7 + 1
``````

I like to throw algorithms I'm looking at into Python so I can play around with them, thought I'd post it here in the hopes that it is useful to someone out there, not that it took long to throw together.

-

Assuming that rand(n) here means "random integer in a uniform distribution from 0 to n-1", here's a code sample using Python's randint, which has that effect. It uses only randint(5), and constants, to produce the effect of randint(7). A little silly, actually

``````from random import randint
sum = 7
while sum >= 7:
first = randint(0,5)
sum = first+5
else:
sum = first

assert 7>sum>=0
print sum
``````
-
9999? why 9999? –  robermorales Sep 21 '11 at 7:30

• x = 5^n (in his case: n=2)
• manipulate n rand5 calls to get a number y within range [1, x]
• z = ((int)(x / 7)) * 7
• if y > z, try again. else return y % 7 + 1

When n equals 2, you have 4 throw-away possibilities: y = {22, 23, 24, 25}. If you use n equals 6, you only have 1 throw-away: y = {15625}.

5^6 = 15625
7 * 2232 = 15624

You call rand5 more times. However, you have a much lower chance of getting a throw-away value (or an infinite loop). If there is a way to get no possible throw-away value for y, I haven't found it yet.

-
There is provably no case without throwaway values--if there was no throwaway, 5^n and 7^m would have a factor in common. But they're (powers of) primes, so they don't. –  Rex Kerr Mar 10 '10 at 19:28
show 1 more comment

``````static struct rand_buffer {
unsigned v, count;
} buf2, buf3;

void push (struct rand_buffer *buf, unsigned n, unsigned v)
{
buf->v = buf->v * n + v;
++buf->count;
}

#define PUSH(n, v)  push (&buf##n, n, v)

int rand16 (void)
{
int v = buf2.v & 0xf;
buf2.v >>= 4;
buf2.count -= 4;
return v;
}

int rand9 (void)
{
int v = buf3.v % 9;
buf3.v /= 9;
buf3.count -= 2;
return v;
}

int rand7 (void)
{
if (buf3.count >= 2) {
int v = rand9 ();

if (v < 7)
return v % 7 + 1;

PUSH (2, v - 7);
}

for (;;) {
if (buf2.count >= 4) {
int v = rand16 ();

if (v < 14) {
PUSH (2, v / 7);
return v % 7 + 1;
}

PUSH (2, v - 14);
}

// Get a number between 0 & 25
int v = 5 * (rand5 () - 1) + rand5 () - 1;

if (v < 21) {
PUSH (3, v / 7);
return v % 7 + 1;
}

v -= 21;
PUSH (2, v & 1);
PUSH (2, v >> 1);
}
}
``````

It's a little more complicated than others, but I believe it minimises the calls to rand5. As with other solutions, there's a small probability that it could loop for a long time.

-

As long as there aren't seven possibilities left to choose from, draw another random number, which multiplies the number of possibilities by five. In Perl:

``````\$num = 0;
\$possibilities = 1;

sub rand7
{
while( \$possibilities < 7 )
{
\$num = \$num * 5 + int(rand(5));
\$possibilities *= 5;
}
my \$result = \$num % 7;
\$num = int( \$num / 7 );
\$possibilities /= 7;
return \$result;
}
``````
-
show 1 more comment

Simple and efficient:

``````int rand7 ( void )
{
return 4; // this number has been calculated using
// rand5() and is in the range 1..7
}
``````
-
If you are going to make a humorous post, at least make it original. –  Nixuz Aug 24 '10 at 4:55

I know it has been answered, but is this seems to work ok, but I can not tell you if it has a bias. My 'testing' suggests it is, at least, reasonable.

Perhaps Adam Rosenfield would be kind enough to comment?

My (naive?) idea is this:

Accumulate rand5's until there is enough random bits to make a rand7. This takes at most 2 rand5's. To get the rand7 number I use the accumulated value mod 7.

To avoid the accumulator overflowing, and since the accumulator is mod 7 then I take the mod 7 of the accumulator:

``````(5a + rand5) % 7 = (k*7 + (5a%7) + rand5) % 7 = ( (5a%7) + rand5) % 7
``````

The rand7() function follows:

(I let the range of rand5 be 0-4 and rand7 is likewise 0-6.)

``````int rand7(){
static int    a=0;
static int    e=0;
int       r;
a = a * 5 + rand5();
e = e + 5;        // added 5/7ths of a rand7 number
if ( e<7 ){
a = a * 5 + rand5();
e = e + 5;  // another 5/7ths
}
r = a % 7;
e = e - 7;        // removed a rand7 number
a = a % 7;
return r;
}
``````

Edit: Added results for 100 million trials.

'Real' rand functions mod 5 or 7

rand5 : avg=1.999802 0:20003944 1:19999889 2:20003690 3:19996938 4:19995539 rand7 : avg=3.000111 0:14282851 1:14282879 2:14284554 3:14288546 4:14292388 5:14288736 6:14280046

My rand7

Average looks ok and number distributions look ok too.

randt : avg=3.000080 0:14288793 1:14280135 2:14287848 3:14285277 4:14286341 5:14278663 6:14292943

-

I don't like ranges starting from 1, so I'll start from 0 :-)

``````unsigned rand5()
{
return rand() % 5;
}

unsigned rand7()
{
int r;

do
{
r =         rand5();
r = r * 5 + rand5();
r = r * 5 + rand5();
r = r * 5 + rand5();
r = r * 5 + rand5();
r = r * 5 + rand5();
} while (r > 15623);

return r / 2232;
}
``````
-

in php

``````function rand1to7() {
do {
\$output_value = 0;
for (\$i = 0; \$i < 28; \$i++) {
\$output_value += rand1to5();
}
while (\$output_value != 140);
\$output_value -= 12;
return floor(\$output_value / 16);
}
``````

loops to produce a random number between 16 and 127, divides by sixteen to create a float between 1 and 7.9375, then rounds down to get an int between 1 and 7. if I am not mistaken, there is a 16/112 chance of getting any one of the 7 outcomes.

-
show 1 more comment

By using a rolling total, you can both

• maintain an equal distribution; and
• not have to sacrifice any element in the random sequence.

Both these problems are an issue with the simplistic `rand(5)+rand(5)...`-type solutions. The following Python code shows how to implement it (most of this is proving the distribution).

``````import random
x = []
for i in range (0,7):
x.append (0)
t = 0
tt = 0
for i in range (0,700000):
########################################
#####            qq.py             #####
r = int (random.random () * 5)
t = (t + r) % 7
########################################
#####       qq_notsogood.py        #####
#r = 20
#while r > 6:
#r =     int (random.random () * 5)
#r = r + int (random.random () * 5)
#t = r
########################################
x[t] = x[t] + 1
tt = tt + 1
high = x[0]
low = x[0]
for i in range (0,7):
print "%d: %7d %.5f" % (i, x[i], 100.0 * x[i] / tt)
if x[i] < low:
low = x[i]
if x[i] > high:
high = x[i]
diff = high - low
print "Variation = %d (%.5f%%)" % (diff, 100.0 * diff / tt)
``````

And this output shows the results:

``````pax\$ python qq.py
0:   99908 14.27257
1:  100029 14.28986
2:  100327 14.33243
3:  100395 14.34214
4:   99104 14.15771
5:   99829 14.26129
6:  100408 14.34400
Variation = 1304 (0.18629%)

pax\$ python qq.py
0:   99547 14.22100
1:  100229 14.31843
2:  100078 14.29686
3:   99451 14.20729
4:  100284 14.32629
5:  100038 14.29114
6:  100373 14.33900
Variation = 922 (0.13171%)

pax\$ python qq.py
0:  100481 14.35443
1:   99188 14.16971
2:  100284 14.32629
3:  100222 14.31743
4:   99960 14.28000
5:   99426 14.20371
6:  100439 14.34843
Variation = 1293 (0.18471%)
``````

A simplistic `rand(5)+rand(5)`, ignoring those cases where this returns more than 6 has a typical variation of 18%, 100 times that of the method shown above:

``````pax\$ python qq_notsogood.py
0:   31756 4.53657
1:   63304 9.04343
2:   95507 13.64386
3:  127825 18.26071
4:  158851 22.69300
5:  127567 18.22386
6:   95190 13.59857
Variation = 127095 (18.15643%)

pax\$ python qq_notsogood.py
0:   31792 4.54171
1:   63637 9.09100
2:   95641 13.66300
3:  127627 18.23243
4:  158751 22.67871
5:  126782 18.11171
6:   95770 13.68143
Variation = 126959 (18.13700%)

pax\$ python qq_notsogood.py
0:   31955 4.56500
1:   63485 9.06929
2:   94849 13.54986
3:  127737 18.24814
4:  159687 22.81243
5:  127391 18.19871
6:   94896 13.55657
Variation = 127732 (18.24743%)
``````

And, on the advice of Nixuz, I've cleaned the script up so you can just extract and use the `rand7...` stuff:

``````import random

# rand5() returns 0 through 4 inclusive.

def rand5():
return int (random.random () * 5)

# rand7() generator returns 0 through 6 inclusive (using rand5()).

def rand7():
rand7ret = 0
while True:
rand7ret = (rand7ret + rand5()) % 7
yield rand7ret

# Number of test runs.

count = 700000

# Work out distribution.

distrib = [0,0,0,0,0,0,0]
rgen =rand7()
for i in range (0,count):
r = rgen.next()
distrib[r] = distrib[r] + 1

# Print distributions and calculate variation.

high = distrib[0]
low = distrib[0]
for i in range (0,7):
print "%d: %7d %.5f" % (i, distrib[i], 100.0 * distrib[i] / count)
if distrib[i] < low:
low = distrib[i]
if distrib[i] > high:
high = distrib[i]
diff = high - low
print "Variation = %d (%.5f%%)" % (diff, 100.0 * diff / count)
``````
-
Err, let me rephrase that. Given that a particular x was produced at some point in the sequence, only 5 of 7 numbers can be produced for the next number in the sequence. A true RNG would have all samples be independent of one another, but in this case they are clearly not. –  Adam Rosenfield May 8 '09 at 3:20
It's true that the original question doesn't specify if the input and output functions produce independent and identically-distributed (iid) samples, but I think it's a reasonable expectation that if the input rand5() is iid, then the output rand7() should also be iid. If you don't think that's reasonable, have fun using your non-iid RNG. –  Adam Rosenfield May 8 '09 at 19:54
So, what's the word from the mathematicians at the university? –  Adam Rosenfield May 12 '09 at 2:52

This answer is more an experiment in obtaining the most entropy possible from the Rand5 function. t is therefore somewhat unclear and almost certainly a lot slower than other implementations.

Assuming the uniform distribution from 0-4 and resulting uniform distribution from 0-6:

``````public class SevenFromFive
{
public SevenFromFive()
{
// this outputs a uniform ditribution but for some reason including it
// screws up the output distribution
// open question Why?
this.fifth = new ProbabilityCondensor(5, b => {});
}

private static Random r = new Random();
private static uint Rand5()
{
return (uint)r.Next(0,5);
}

private class ProbabilityCondensor
{
private int counter;
private int store;

public ProbabilityCondensor(int chanceOfTrueReciprocal,
Action<bool> output)
{
this.output = output;
this.samples = chanceOfTrueReciprocal - 1;
}

{
this.counter++;
if (bit)
this.store++;
if (counter == samples)
{
bool? e;
if (store == 0)
e = false;
else if (store == 1)
e = true;
else
e = null;// discard for now
counter = 0;
store = 0;
if (e.HasValue)
output(e.Value);
}
}
}

ulong buffer = 0;
int bitsAvail = 0;

{
buffer <<= 1;
if (bit)
buffer |= 1;
bitsAvail++;
}

{
buffer <<= 2;
buffer |= (u & 3UL);
bitsAvail += 2;
}

public uint Rand7()
{
uint selection;
do
{
while (bitsAvail < 3)
{
var x = Rand5();
if (x < 4)
{
// put the two low order bits straight in
}
else
{
}
}
bitsAvail -= 3;
buffer >>= 3;
if (selection == 7)
else
}
while (selection == 7);
return selection;
}
}
``````

The number of bits added to the buffer per call to Rand5 is currently 4/5 * 2 so 1.6. If the 1/5 probability value is included that increases by 0.05 so 1.65 but see the comment in the code where I have had to disable this.

Bits consumed by call to Rand7 = 3 + 1/8 * (3 + 1/8 * (3 + 1/8 * (...
This is 3 + 3/8 + 3/64 + 3/512 ... so approx 3.42

By extracting information from the sevens I reclaim 1/8*1/7 bits per call so about 0.018

This gives a net consumption 3.4 bits per call which means the ratio is 2.125 calls to Rand5 for every Rand7. The optimum should be 2.1.

I would imagine this approach is significantly slower than many of the other ones here unless the cost of the call to Rand5 is extremely expensive (say calling out to some external source of entropy).

-

There are elegant algorithms cited above, but here's one way to approach it, although it might be roundabout. I am assuming values generated from 0.

R2 = random number generator giving values less than 2 (sample space = {0, 1})
R8 = random number generator giving values less than 8 (sample space = {0, 1, 2, 3, 4, 5, 6, 7})

In order to generate R8 from R2, you will run R2 thrice, and use the combined result of all 3 runs as a binary number with 3 digits. Here are the range of values when R2 is ran thrice:

0 0 0 --> 0
.
.
1 1 1 --> 7

Now to generate R7 from R8, we simply run R7 again if it returns 7:

``````int R7() {
do {
x = R8();
} while (x > 6)
return x;
}
``````

The roundabout solution is to generate R2 from R5 (just like we generated R7 from R8), then R8 from R2 and then R7 from R8.

-
show 1 more comment

The function you need is *rand1_7()*, I wrote rand1_5() so that you can test it and plot it.

``````import numpy
def rand1_5():
return numpy.random.randint(5)+1

def rand1_7():
q = 0
for i in xrange(7):  q+= rand1_5()
return q%7 + 1
``````
-

There you go, uniform distribution and zero rand5 calls.

``````def rand7:
seed += 1
if seed >= 7:
seed = 0
yield seed
``````

Need to set seed beforehand.

-

Here's a solution that fits entirely within integers and is within about 4% of optimal (i.e. uses 1.26 random numbers in {0..4} for every one in {0..6}). The code's in Scala, but the math should be reasonably clear in any language: you take advantage of the fact that 7^9 + 7^8 is very close to 5^11. So you pick an 11 digit number in base 5, and then interpret it as a 9 digit number in base 7 if it's in range (giving 9 base 7 numbers), or as an 8 digit number if it's over the 9 digit number, etc.:

``````abstract class RNG {
def apply(): Int
}

class Random5 extends RNG {
val rng = new scala.util.Random
var count = 0
def apply() = { count += 1 ; rng.nextInt(5) }
}

class FiveSevener(five: RNG) {
val sevens = new Array[Int](9)
var nsevens = 0
val to9 = 40353607;
val to8 = 5764801;
val to7 = 823543;
def loadSevens(value: Int, count: Int) {
nsevens = 0;
var remaining = value;
while (nsevens < count) {
sevens(nsevens) = remaining % 7
remaining /= 7
nsevens += 1
}
}
var fivepow11 = 0;
var i=0
while (i<11) { i+=1 ; fivepow11 = five() + fivepow11*5 }
if (fivepow11 < to9) { loadSevens(fivepow11 , 9) ; return }
fivepow11 -= to9
if (fivepow11 < to8) { loadSevens(fivepow11 , 8) ; return }
fivepow11 -= to8
if (fivepow11 < 3*to7) loadSevens(fivepow11 % to7 , 7)
}
def apply() = {
nsevens -= 1
sevens(nsevens)
}
}
``````

If you paste a test into the interpreter (REPL actually), you get:

``````scala> val five = new Random5
five: Random5 = Random5@e9c592

scala> val seven = new FiveSevener(five)
seven: FiveSevener = FiveSevener@143c423

scala> val counts = new Array[Int](7)
counts: Array[Int] = Array(0, 0, 0, 0, 0, 0, 0)

scala> var i=0 ; while (i < 100000000) { counts( seven() ) += 1 ; i += 1 }
i: Int = 100000000

scala> counts
res0: Array[Int] = Array(14280662, 14293012, 14281286, 14284836, 14287188,
14289332, 14283684)

scala> five.count
res1: Int = 125902876
``````

The distribution is nice and flat (within about 10k of 1/7 of 10^8 in each bin, as expected from an approximately-Gaussian distribution).

-

``````0) you have a number in range 1-5
1) subtract 1 to make it in range 0-4
2) multiply by (7-1)/(5-1) to make it in range 0-6
3) add 1 to increment the range: Now your result is in between 1-7
``````
-
Sorry, this would only work if you are working with real numbers or doubles etc... Randomizing is a tricky subject! –  cartonn May 27 '10 at 8:22
show 1 more comment
``````int getOneToSeven(){
for(int i = 1; i<=7; i++){
}
}
``````
-
show 1 more comment
``````rand25() =5*(rand5()-1) + rand5()

rand7() {
while(true) {
int r = rand25();
if (r < 21) return r%3;
}
}
``````

Why this works: probability that the loop will run forever is 0.

-