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I have a stream of (uniform) random bits from which I'd like to generate random integers uniformly in the range [0,n] without wasting bits. (I'm considering bits wasted which are in excess of floor(log_2(n))+1, on the assumption that it's always possible to use no more than that.) E.g., if n = 5, then the algorithm I'm looking for should use no more than three bits. How can this be done?

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Are you sure this can be done? – Snowbear May 18 '11 at 15:17
I have neither a proof that it's possible, nor one that it's impossible. If ceil(log_2(n)) bits isn't the least upper bound, then there is still some other upper bound on the number of bits needed; whatever the minimum, I'd like not to exceed that. – uckelman May 18 '11 at 15:22
I doubt it is possible (to receive uniform distribution with fixed amount of bits) if n is not power of 2. There can be algorithms which will lead you there faster (with less bits) but I doubt there can be found an algorithm which will be able to do it with fixed amount of bits. – Snowbear May 18 '11 at 15:34
My hunch is that for n not a power of 2, you can't satisfy the uniformity requirement at all on a binary computer, though I suppose you could get arbitrarily small error by using more bits. – uckelman May 18 '11 at 15:36
Yep, if you really want to use fixed amount of bits then you can think about minimizing uniformity errors. – Snowbear May 18 '11 at 15:40
up vote 2 down vote accepted

This is equivalent to find a two-way function between two set of different (finite) cardinality. It is impossible.

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Yes, this occurred to me while cycling home. I feel kind of silly now. – uckelman May 18 '11 at 16:14

It seems like you could just take x= ceil(log_2(n)) bits at a time, and just use these as your random numbers. The problem you'll encounter is that if the number you receive is greater than your limit (e.g. 5), then you'll want to perform some magic to get it less than 5, but uniformly. In this case, what seems logical is that you would just take another x bits, but since you've specified that we can't waste bits, then we're going to have to be more creative. I would recommend a right or left rotate, but this isn't always going to get you out of the situation. (Consider a string of 111 when you wanted n=5). We could do up to x rotates, to see if one of the rotates gets us into the correct range, or we could just flip all of the bits and add 1 (two's complement). I believe this will make it uniform.

So, for example, if you had the following string (rightmost bit is the first one you receive):


And you're using n=5, then ceil(log2(n)) = 3, so you'll use three bits at a time, and the following will be your results (at each time step):

t=0 : 101 = 5
t=1: 010 = 2
t=2: 010 = 2
t=3: 111 = 7 -> too large, rotates won't work, so we use 2's complement: 001 = 1
t=4: 001 = 1
t=5: 101 = 5
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This fails the uniformity requirement: For n = 5, p(1) = 1/4, when it should be 1/6. – uckelman May 18 '11 at 15:25
Hm... yep, you're right. Dang. Thought I got it. ;) – jwir3 May 18 '11 at 21:15

First find out the number of possible values you want to generate. In case of integers in the range 0..5, that's 6 values. They can be represented in ceil( log(6)/log(2) ) bits.

// in C++
std::bitset< 3 > bits;
// fill the bitset

// interpret as a number
long value = bits.to_ulong();

Then find the transformation from n-bits to the final representation format: it needs to be scaled from the range [0..2N] to the range [from,to]:

double out_from=-1, out_to=5;
double in_from=0, in_to = std::bitset<3>().flip().to_ulong();

double factor   = (out_to-out_from)/(in_to-in_from)
double constant = out_from - in_from;

double rescaled = in_value * scale + constant;
long out = floor( rescaled );
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This fails the uniformity requirement: For n = 5, p(3) = 1/4, when it should be 1/6. – uckelman May 18 '11 at 15:33
randomization... never as easy as it seems :( – xtofl May 18 '11 at 16:48

Although your question description specifies a fixed number of bits per random number generated your title does not. So I am going to add here that on average you can generate a random number with the number of bits you state plus half a bit. The algorithm below takes an variable number of bits for values of n not divisible by 2, but the average number bits it will consume is floor(log_2(n)) + 1.5.

Standard implementations of the function to generate an integer in a range use % (modulo) on a large random number. This wastes bits and will not produce a mathematically exact random distribution unless it is rerun for some values of the large random number. The following algorithm produces a true random distribution and will not waste bits. (Or rather I do not see an obvious way to reduce the number of bits it consumes. Maybe some entropy could be recovered from the 'number too large' occurences.)

# Generate a number from 0 to n inclusive without wasting bits.
function RandomInteger(n)
    if n <= 0
        i = Floor(Log2(n))
        x = i
        r = 0
        while x >= 0
            r = r + (2 ^ x) * NextRandomBit()
            if r > n 
                # Selected number too large so begin again.
                x = i 
                r = 0
                # Still in range. Calculate the next bit.
                x = x - 1
        return r

PS The algorithm above is written for clarity not speed. It would be very fast if rewritten to process multiple bits at once.

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If I'm reading this correctly, when you generate an r > n, you start over. This leaves me unclear on how you arrive at your average bits consumed, since every finite number of restarts has nonzero probability. Does this happen to be a converging sequence, so that you can sum over it? – uckelman Jun 22 '12 at 20:48
@uckelman If we convert n to a binary number it will have Floor(Log2(n))+1 bits and the highest bit will be 1. Our first random bit cannot generate a number that is too large. If the first random bit is 0 then any subsequent sequence of random bits will not be too large. So there is a 50% chance that the first bit will stop any bits being wasted. If the first random bit is 1 we need to examine the next bit down. There is then a 50% chance that this next bit from n will be 1, because we are calculating for all values of n, giving another 50% chance of no wasted bits. Something like that. – soid Oct 1 '12 at 11:04

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