# Why do people say there is modulo bias when using a random number generator?

I have seen this question asked a lot but never seen a true concrete answer to it. So I am going to post one here which will hopefully help people understand why exactly there is "modulo bias" when using a random number generator, like `rand()` in C++.

So `rand()` is a pseudo-random number generator which chooses a natural number between 0 and `RAND_MAX`, which is a constant defined in `cstdlib` (see this article for a general overview on `rand()`).

Now what happens if you want to generate a random number between say 0 and 2? For the sake of explanation, let's say `RAND_MAX` is 10 and I decide to generate a random number between 0 and 2 by calling `rand()%3`. However, `rand()%3` does not produce the numbers between 0 and 2 with equal probability!

When `rand()` returns 0, 3, 6, or 9, `rand()%3 == 0`. Therefore, P(0) = 4/11

When `rand()` returns 1, 4, 7, or 10, `rand()%3 == 1`. Therefore, P(1) = 4/11

When `rand()` returns 2, 5, or 8, `rand()%3 == 2`. Therefore, P(2) = 3/11

This does not generate the numbers between 0 and 2 with equal probability. Of course for small ranges this might not be the biggest issue but for a larger range this could skew the distribution, biasing the smaller numbers.

So when does `rand()%n` return a range of numbers from 0 to n-1 with equal probability? When `RAND_MAX%n == n - 1`. In this case, along with our earlier assumption `rand()` does return a number between 0 and `RAND_MAX` with equal probability, the modulo classes of n would also be equally distributed.

So how do we solve this problem? A crude way is to keep generating random numbers until you get a number in your desired range:

``````int x;
do {
x = rand();
} while (x >= n);
``````

but that's inefficient for low values of `n`, since you only have a `n/RAND_MAX` chance of getting a value in your range, and so you'll need to perform `RAND_MAX/n` calls to `rand()` on average.

A more efficient formula approach would be to take some large range with a length divisible by `n`, like `RAND_MAX - RAND_MAX % n`, keep generating random numbers until you get one that lies in the range, and then take the modulus:

``````int x;

do {
x = rand();
} while (x >= (RAND_MAX - RAND_MAX % n));

x %= n;
``````

For small values of `n`, this will rarely require more than one call to `rand()`.

• Another way of thinking about_`RAND_MAX%n == n - 1`_ is `(RAND_MAX + 1) % n == 0`. When reading code, I tend to understand `% something == 0` as “evenly divisible” more readily than other ways of calculating it. Of course, if your C++ stdlib has `RAND_MAX` as the same value as `INT_MAX`, `(RAND_MAX + 1)` surely wouldn't work; so Mark's calculation remains the safest implementation. Jul 19, 2016 at 8:04
• I may be nitpicking, but if the goal is to reduce wasted bits we could improve this slightly for the edge condition where RAND_MAX (RM) is only 1 less than being equally divisible by N. In this scenario, no bits need to be wasted by doing X >= (RM - RM % N)) which is of little value for small values of N, but becomes of larger value for large values of N. As mentioned by Slipp D. Thompson, there is a solution which will work only when INT_MAX (IM) > RAND_MAX but breaks when they are equal. However, there is a simple solution for this we can amend the calculation X >= (RM - RM % N) as follows: Oct 28, 2017 at 14:56
• X >= RM - ( ( ( RM % N ) + 1 ) % N ) Oct 28, 2017 at 14:58
• I posted an additional answer explaining the problem in detail and giving the example code solution. Oct 31, 2017 at 12:08
• Is the use of a loop introducing room for a side-channel attack in this case? Nov 26, 2020 at 10:54

Keep selecting a random is a good way to remove the bias.

Update

We could make the code fast if we search for an x in range divisible by `n`.

``````// Assumptions
// rand() in [0, RAND_MAX]
// n in (0, RAND_MAX]

int x;

// Keep searching for an x in a range divisible by n
do {
x = rand();
} while (x >= RAND_MAX - (RAND_MAX % n))

x %= n;
``````

The above loop should be very fast, say 1 iteration on average.

• Yuck :-P converting to a double, then multiplying by MAX_UPPER_LIMIT/RAND_MAX is much cleaner and performs better. Jun 13, 2012 at 7:59
• @boycy: you've missed the point. If the number of values that `rand()` can return is not a multiple of `n`, then whatever you do, you will inevitably get 'modulo bias', unless you discard some of those values. user1413793 explains that nicely (although the solution proposed in that answer is truly yucky). Jun 17, 2012 at 11:31
• @TonyK my apologies, I did miss the point. Didn't think hard enough, and thought the bias would only apply with methods using an explicit modulus operation. Thanks for fixing me :-) Jun 18, 2012 at 12:26
• This won't work if `RAND_MAX == INT_MAX` (as it does on most systems). See my second comment to @user1413793 above. Nov 6, 2012 at 22:04
• @BlueRaja-DannyPflughoeft On most systems? I've never seen a libc implementation where `RAND_MAX` isn't `32767` -- Microsoft's Visual libc, GLibC, BSD libc, even across architechtures
– cat
Jun 26, 2017 at 3:21

@user1413793 is correct about the problem. I'm not going to discuss that further, except to make one point: yes, for small values of `n` and large values of `RAND_MAX`, the modulo bias can be very small. But using a bias-inducing pattern means that you must consider the bias every time you calculate a random number and choose different patterns for different cases. And if you make the wrong choice, the bugs it introduces are subtle and almost impossible to unit test. Compared to just using the proper tool (such as `arc4random_uniform`), that's extra work, not less work. Doing more work and getting a worse solution is terrible engineering, especially when doing it right every time is easy on most platforms.

Unfortunately, the implementations of the solution are all incorrect or less efficient than they should be. (Each solution has various comments explaining the problems, but none of the solutions have been fixed to address them.) This is likely to confuse the casual answer-seeker, so I'm providing a known-good implementation here.

Again, the best solution is just to use `arc4random_uniform` on platforms that provide it, or a similar ranged solution for your platform (such as `Random.nextInt` on Java). It will do the right thing at no code cost to you. This is almost always the correct call to make.

If you don't have `arc4random_uniform`, then you can use the power of opensource to see exactly how it is implemented on top of a wider-range RNG (`ar4random` in this case, but a similar approach could also work on top of other RNGs).

Here is the OpenBSD implementation:

``````/*
* Calculate a uniformly distributed random number less than upper_bound
* avoiding "modulo bias".
*
* Uniformity is achieved by generating new random numbers until the one
* returned is outside the range [0, 2**32 % upper_bound).  This
* guarantees the selected random number will be inside
* [2**32 % upper_bound, 2**32) which maps back to [0, upper_bound)
* after reduction modulo upper_bound.
*/
u_int32_t
arc4random_uniform(u_int32_t upper_bound)
{
u_int32_t r, min;

if (upper_bound < 2)
return 0;

/* 2**32 % x == (2**32 - x) % x */
min = -upper_bound % upper_bound;

/*
* This could theoretically loop forever but each retry has
* p > 0.5 (worst case, usually far better) of selecting a
* number inside the range we need, so it should rarely need
* to re-roll.
*/
for (;;) {
r = arc4random();
if (r >= min)
break;
}

return r % upper_bound;
}
``````

It is worth noting the latest commit comment on this code for those who need to implement similar things:

Change arc4random_uniform() to calculate `2**32 % upper_bound` as `-upper_bound % upper_bound`. Simplifies the code and makes it the same on both ILP32 and LP64 architectures, and also slightly faster on LP64 architectures by using a 32-bit remainder instead of a 64-bit remainder.

Pointed out by Jorden Verwer on tech@ ok deraadt; no objections from djm or otto

The Java implementation is also easily findable (see previous link):

``````public int nextInt(int n) {
if (n <= 0)
throw new IllegalArgumentException("n must be positive");

if ((n & -n) == n)  // i.e., n is a power of 2
return (int)((n * (long)next(31)) >> 31);

int bits, val;
do {
bits = next(31);
val = bits % n;
} while (bits - val + (n-1) < 0);
return val;
}
``````
• Note that if `arcfour_random()` actually uses the real RC4 algorithm in its implementation, the output will definitely have some bias. Hopefully your library authors have switched to using a better CSPRNG behind the same interface. I recall one of the BSDs now actually uses the ChaCha20 algorithm to implement `arcfour_random()`. More on the RC4 output biases which render it useless for security or other critical applications such as video poker: blog.cryptographyengineering.com/2013/03/… Aug 9, 2016 at 1:38
• @rmalayter On iOS and OS X, arc4random reads from /dev/random which is the highest quality entropy in the system. (The "arc4" in the name is historic and preserved for compatibility.) Aug 9, 2016 at 1:51
• @Rob_Napier good to know, but `/dev/random` has also used RC4 on some platforms in the past (Linux uses SHA-1 in counter mode). Unfortunately the man pages I found via search indicate that RC4 is still in use on various platforms that offer `arc4random` (though the actual code may be different). Aug 9, 2016 at 2:36
• I'm confused. Isn't `-upper_bound % upper_bound == 0`?? Mar 8, 2019 at 21:01
• @JonMcClung `-upper_bound % upper_bound` will indeed be 0 if `int` is wider than 32-bits. It should be `(u_int32_t)-upper_bound % upper_bound)` (assuming `u_int32_t` is a BSD-ism for `uint32_t`). Aug 15, 2019 at 17:13

# Definition

Modulo Bias is the inherent bias in using modulo arithmetic to reduce an output set to a subset of the input set. In general, a bias exists whenever the mapping between the input and output set is not equally distributed, as in the case of using modulo arithmetic when the size of the output set is not a divisor of the size of the input set.

This bias is particularly hard to avoid in computing, where numbers are represented as strings of bits: 0s and 1s. Finding truly random sources of randomness is also extremely difficult, but is beyond the scope of this discussion. For the remainder of this answer, assume that there exists an unlimited source of truly random bits.

# Problem Example

Let's consider simulating a die roll (0 to 5) using these random bits. There are 6 possibilities, so we need enough bits to represent the number 6, which is 3 bits. Unfortunately, 3 random bits yields 8 possible outcomes:

``````000 = 0, 001 = 1, 010 = 2, 011 = 3
100 = 4, 101 = 5, 110 = 6, 111 = 7
``````

We can reduce the size of the outcome set to exactly 6 by taking the value modulo 6, however this presents the modulo bias problem: `110` yields a 0, and `111` yields a 1. This die is loaded.

# Potential Solutions

## Approach 0:

Rather than rely on random bits, in theory one could hire a small army to roll dice all day and record the results in a database, and then use each result only once. This is about as practical as it sounds, and more than likely would not yield truly random results anyway (pun intended).

## Approach 1:

Instead of using the modulus, a naive but mathematically correct solution is to discard results that yield `110` and `111` and simply try again with 3 new bits. Unfortunately, this means that there is a 25% chance on each roll that a re-roll will be required, including each of the re-rolls themselves. This is clearly impractical for all but the most trivial of uses.

## Approach 2:

Use more bits: instead of 3 bits, use 4. This yield 16 possible outcomes. Of course, re-rolling anytime the result is greater than 5 makes things worse (10/16 = 62.5%) so that alone won't help.

Notice that 2 * 6 = 12 < 16, so we can safely take any outcome less than 12 and reduce that modulo 6 to evenly distribute the outcomes. The other 4 outcomes must be discarded, and then re-rolled as in the previous approach.

Sounds good at first, but let's check the math:

``````4 discarded results / 16 possibilities = 25%
``````

In this case, 1 extra bit didn't help at all!

That result is unfortunate, but let's try again with 5 bits:

``````32 % 6 = 2 discarded results; and
2 discarded results / 32 possibilities = 6.25%
``````

A definite improvement, but not good enough in many practical cases. The good news is, adding more bits will never increase the chances of needing to discard and re-roll. This holds not just for dice, but in all cases.

As demonstrated however, adding an 1 extra bit may not change anything. In fact if we increase our roll to 6 bits, the probability remains 6.25%.

1. If we add enough bits, is there a guarantee that the probability of a discard will diminish?
2. How many bits are enough in the general case?

# General Solution

Thankfully the answer to the first question is yes. The problem with 6 is that 2^x mod 6 flips between 2 and 4 which coincidentally are a multiple of 2 from each other, so that for an even x > 1,

``````[2^x mod 6] / 2^x == [2^(x+1) mod 6] / 2^(x+1)
``````

Thus 6 is an exception rather than the rule. It is possible to find larger moduli that yield consecutive powers of 2 in the same way, but eventually this must wrap around, and the probability of a discard will be reduced.

Without offering further proof, in general using double the number of bits required will provide a smaller, usually insignificant, chance of a discard.

# Proof of Concept

Here is an example program that uses OpenSSL's libcrypo to supply random bytes. When compiling, be sure to link to the library with `-lcrypto` which most everyone should have available.

``````#include <iostream>
#include <assert.h>
#include <limits>
#include <openssl/rand.h>

volatile uint32_t dummy;

uint32_t uniformRandomUint32(uint32_t upperBound)
{
assert(RAND_status() == 1);
uint64_t discard = (std::numeric_limits<uint64_t>::max() - upperBound) % upperBound;
RAND_bytes((uint8_t*)(&randomPool), sizeof(randomPool));

while(randomPool > (std::numeric_limits<uint64_t>::max() - discard)) {
RAND_bytes((uint8_t*)(&randomPool), sizeof(randomPool));
}

return randomPool % upperBound;
}

int main() {

const uint32_t MODULUS = (1ul << 31)-1;
const uint32_t ROLLS = 10000000;

for(uint32_t i = 0; i < ROLLS; ++i) {
dummy = uniformRandomUint32(MODULUS);
}
}
``````

I encourage playing with the `MODULUS` and `ROLLS` values to see how many re-rolls actually happen under most conditions. A sceptical person may also wish to save the computed values to file and verify the distribution appears normal.

• I really hope nobody has blindly copied your uniform random implementation. The `randomPool = RAND_bytes(...)` line will always result in `randomPool == 1` due to the assertion. This always results in a discard and a re-roll. I think you wanted to declare on a separate line. Consequently, this caused the RNG to return with `1` for every iteration. Dec 22, 2017 at 3:31
• To be clear, `randomPool` will always evaluate to `1` according to the OpenSSL documentation for `RAND_bytes()` since it will always succeed thanks to the `RAND_status()` assertion. Dec 22, 2017 at 3:37

Mark's Solution (The accepted solution) is Nearly Perfect.

``````int x;

do {
x = rand();
} while (x >= (RAND_MAX - RAND_MAX % n));

x %= n;
``````

edited Mar 25 '16 at 23:16

Mark Amery 39k21170211

However, it has a caveat which discards 1 valid set of outcomes in any scenario where `RAND_MAX` (`RM`) is 1 less than a multiple of `N` (Where `N` = the Number of possible valid outcomes).

ie, When the 'count of values discarded' (`D`) is equal to `N`, then they are actually a valid set (`V)`, not an invalid set (`I`).

What causes this is at some point Mark loses sight of the difference between `N` and `Rand_Max`.

`N` is a set who's valid members are comprised only of Positive Integers, as it contains a count of responses that would be valid. (eg: Set `N` = `{1, 2, 3, ... n }` )

`Rand_max` However is a set which ( as defined for our purposes ) includes any number of non-negative integers.

In it's most generic form, what is defined here as `Rand Max` is the Set of all valid outcomes, which could theoretically include negative numbers or non-numeric values.

Therefore `Rand_Max` is better defined as the set of "Possible Responses".

However `N` operates against the count of the values within the set of valid responses, so even as defined in our specific case, `Rand_Max` will be a value one less than the total number it contains.

Using Mark's Solution, Values are Discarded when: X => RM - RM % N

``````EG:

Ran Max Value (RM) = 255
Valid Outcome (N) = 4

When X => 252, Discarded values for X are: 252, 253, 254, 255

So, if Random Value Selected (X) = {252, 253, 254, 255}

Number of discarded Values (I) = RM % N + 1 == N

IE:

I = RM % N + 1
I = 255 % 4 + 1
I = 3 + 1
I = 4

X => ( RM - RM % N )
255 => (255 - 255 % 4)
255 => (255 - 3)
255 => (252)

``````

As you can see in the example above, when the value of X (the random number we get from the initial function) is 252, 253, 254, or 255 we would discard it even though these four values comprise a valid set of returned values.

IE: When the count of the values Discarded (I) = N (The number of valid outcomes) then a Valid set of return values will be discarded by the original function.

If we describe the difference between the values N and RM as D, ie:

``````D = (RM - N)
``````

Then as the value of D becomes smaller, the Percentage of unneeded re-rolls due to this method increases at each natural multiplicative. (When RAND_MAX is NOT equal to a Prime Number this is of valid concern)

EG:

``````RM=255 , N=2 Then: D = 253, Lost percentage = 0.78125%

RM=255 , N=4 Then: D = 251, Lost percentage = 1.5625%
RM=255 , N=8 Then: D = 247, Lost percentage = 3.125%
RM=255 , N=16 Then: D = 239, Lost percentage = 6.25%
RM=255 , N=32 Then: D = 223, Lost percentage = 12.5%
RM=255 , N=64 Then: D = 191, Lost percentage = 25%
RM=255 , N= 128 Then D = 127, Lost percentage = 50%
``````

Since the percentage of Rerolls needed increases the closer N comes to RM, this can be of valid concern at many different values depending on the constraints of the system running he code and the values being looked for.

To negate this we can make a simple amendment As shown here:

`````` int x;

do {
x = rand();
} while (x > (RAND_MAX - ( ( ( RAND_MAX % n ) + 1 ) % n) );

x %= n;
``````

This provides a more general version of the formula which accounts for the additional peculiarities of using modulus to define your max values.

Examples of using a small value for RAND_MAX which is a multiplicative of N.

Mark'original Version:

``````RAND_MAX = 3, n = 2, Values in RAND_MAX = 0,1,2,3, Valid Sets = 0,1 and 2,3.
When X >= (RAND_MAX - ( RAND_MAX % n ) )
When X >= 2 the value will be discarded, even though the set is valid.
``````

Generalized Version 1:

``````RAND_MAX = 3, n = 2, Values in RAND_MAX = 0,1,2,3, Valid Sets = 0,1 and 2,3.
When X > (RAND_MAX - ( ( RAND_MAX % n  ) + 1 ) % n )
When X > 3 the value would be discarded, but this is not a vlue in the set RAND_MAX so there will be no discard.
``````

Additionally, in the case where N should be the number of values in RAND_MAX; in this case, you could set N = RAND_MAX +1, unless RAND_MAX = INT_MAX.

Loop-wise you could just use N = 1, and any value of X will be accepted, however, and put an IF statement in for your final multiplier. But perhaps you have code that may have a valid reason to return a 1 when the function is called with n = 1...

So it may be better to use 0, which would normally provide a Div 0 Error, when you wish to have n = RAND_MAX+1

Generalized Version 2:

``````int x;

if n != 0 {
do {
x = rand();
} while (x > (RAND_MAX - ( ( ( RAND_MAX % n ) + 1 ) % n) );

x %= n;
} else {
x = rand();
}
``````

Both of these solutions resolve the issue with needlessly discarded valid results which will occur when RM+1 is a product of n.

The second version also covers the edge case scenario when you need n to equal the total possible set of values contained in RAND_MAX.

The modified approach in both is the same and allows for a more general solution to the need of providing valid random numbers and minimizing discarded values.

To reiterate:

The Basic General Solution which extends mark's example:

``````// Assumes:
//  RAND_MAX is a globally defined constant, returned from the environment.
//  int n; // User input, or externally defined, number of valid choices.

int x;

do {
x = rand();
} while (x > (RAND_MAX - ( ( ( RAND_MAX % n ) + 1 ) % n) ) );

x %= n;
``````

The Extended General Solution which Allows one additional scenario of RAND_MAX+1 = n:

``````// Assumes:
//  RAND_MAX is a globally defined constant, returned from the environment.
//  int n; // User input, or externally defined, number of valid choices.

int x;

if n != 0 {
do {
x = rand();
} while (x > (RAND_MAX - ( ( ( RAND_MAX % n ) + 1 ) % n) ) );

x %= n;
} else {
x = rand();
}
``````

In some languages ( particularly interpreted languages ) doing the calculations of the compare-operation outside of the while condition may lead to faster results as this is a one-time calculation no matter how many re-tries are required. YMMV!

``````// Assumes:
//  RAND_MAX is a globally defined constant, returned from the environment.
//  int n; // User input, or externally defined, number of valid choices.

int x; // Resulting random number
int y; // One-time calculation of the compare value for x

y = RAND_MAX - ( ( ( RAND_MAX % n ) + 1 ) % n)

if n != 0 {
do {
x = rand();
} while (x > y);

x %= n;
} else {
x = rand();
}
``````
• Isn't it safe to say that the problem with Mark's solution is that he treats RAND_MAX and n as being the same "unit of measure" when in fact they mean two different things? While n represents the resulting "number of possibilities", RAND_MAX only represents the max value of the original possibility, where RAND_MAX + 1 would be the original number of possibilities. I'm surprised he didn't get to your conclusion since he seemed to have acknowledged n and RAND_MAX were not the same thing with the equation: `RAND_MAX%n = n - 1` Aug 11, 2019 at 2:16
• @DaniloSouzaMorães Thank you Danilo, You have put the matter very succinctly. I went for demonstrating what he was doing along with the Why and how of it, but don't think I was ever able to state WHAT he was doing wrong eloquently, as I get so wrapped up in the details of the logic on how and why there is an issue, that I am not stating as clearly what is at issue. Do you mind if I amend my Answer to use some of what you've written here as my own summary to the issue of what and where the accepted solution is doing what needs to be addressed near the top? Oct 16, 2019 at 18:14
• The last edit (2020) is IMO wrong, @BenPersonick. `y` is not used outside the `n != 0` branch and it makes no sense outside the branch due to division by zero (`... % n`). Jan 1 at 1:14
• @palec y stops the need to run the static calculation more than once per runnof rhencode, as other solutions require it to run at every iteration waiting CPU cycles. I am at new years every dinner, but that is an example of how to speed up the code. Y must always be calculated once per run, creating 6 uses memoria space but means it will be one chaced memory call probably on the CPU cache per compare vs an actual CPU calculation, ut it's possible the CPU compare will also be done entirely from the cahe too, so, there may be no differerenxe, or which is fanter may be different. YMMV Jan 1 at 1:31
• @BenPersonick, I understand why `y` is needed, i.e. that some compilers will not hoist it out of the loop and manual hoisting is needed. I just think that the definition of `y` should take place just before the do-while loop and no earlier. Think about when `n == 0`. Happy New Year! :-) Jan 1 at 1:41

There are two usual complaints with the use of modulo.

• one is valid for all generators. It is easier to see in a limit case. If your generator has a RAND_MAX which is 2 (that isn't compliant with the C standard) and you want only 0 or 1 as value, using modulo will generate 0 twice as often (when the generator generates 0 and 2) as it will generate 1 (when the generator generates 1). Note that this is true as soon as you don't drop values, whatever the mapping you are using from the generator values to the wanted one, one will occurs twice as often as the other.

• some kind of generator have their less significant bits less random than the other, at least for some of their parameters, but sadly those parameter have other interesting characteristic (such has being able to have RAND_MAX one less than a power of 2). The problem is well known and for a long time library implementation probably avoid the problem (for instance the sample rand() implementation in the C standard use this kind of generator, but drop the 16 less significant bits), but some like to complain about that and you may have bad luck

Using something like

``````int alea(int n){
assert (0 < n && n <= RAND_MAX);
int partSize =
n == RAND_MAX ? 1 : 1 + (RAND_MAX-n)/(n+1);
int maxUsefull = partSize * n + (partSize-1);
int draw;
do {
draw = rand();
} while (draw > maxUsefull);
return draw/partSize;
}
``````

to generate a random number between 0 and n will avoid both problems (and it avoids overflow with RAND_MAX == INT_MAX)

BTW, C++11 introduced standard ways to the the reduction and other generator than rand().

• n == RAND_MAX ? 1 : (RAND_MAX-1)/(n+1): I understand the idea here is to first divide RAND_MAX into equal page size N, then return the deviation within N, but I cannot map the code to this precisely. Jun 15, 2012 at 3:18
• The naive version should be (RAND_MAX+1)/(n+1) as there is RAND_MAX+1 values to divide in n+1 buckets. If order to avoid overflow when computing RAND_MAX+1, it can be transformed in 1+(RAND_MAX-n)/(n+1). In order to avoid overflow when computing n+1, the case n==RAND_MAX is first checked. Jun 15, 2012 at 6:42
• +plus, doing divide is seeming costing more even compared with regenerate numbers. Jun 15, 2012 at 8:56
• Taking the modulo and dividing have the same cost. Some ISA even provide just one instruction which provide always both. The cost of regenerating numbers will depend on n and RAND_MAX. If n is small in respect to RAND_MAX, it may cost a lot. And obviously you may decide the the biases isn't important for your application; I just give a way to avoid them. Jun 15, 2012 at 9:10

With a `RAND_MAX` value of `3` (in reality it should be much higher than that but the bias would still exist) it makes sense from these calculations that there is a bias:

`1 % 2 = 1` `2 % 2 = 0` `3 % 2 = 1` `random_between(1, 3) % 2 = more likely a 1`

In this case, the `% 2` is what you shouldn't do when you want a random number between `0` and `1`. You could get a random number between `0` and `2` by doing `% 3` though, because in this case: `RAND_MAX` is a multiple of `3`.

Another method

There is much simpler but to add to other answers, here is my solution to get a random number between `0` and `n - 1`, so `n` different possibilities, without bias.

• the number of bits (not bytes) needed to encode the number of possibilities is the number of bits of random data you'll need
• encode the number from random bits
• if this number is `>= n`, restart (no modulo).

Really random data is not easy to obtain, so why use more bits than needed.

Below is an example in Smalltalk, using a cache of bits from a pseudo-random number generator. I'm no security expert so use at your own risk.

``````next: n

| bitSize r from to |
n < 0 ifTrue: [^0 - (self next: 0 - n)].
n = 0 ifTrue: [^nil].
n = 1 ifTrue: [^0].
cache isNil ifTrue: [cache := OrderedCollection new].
cache size < (self randmax highBit) ifTrue: [
Security.DSSRandom default next asByteArray do: [ :byte |
(1 to: 8) do: [ :i |    cache add: (byte bitAt: i)]
]
].
r := 0.
bitSize := n highBit.
to := cache size.
from := to - bitSize + 1.
(from to: to) do: [ :i |
r := r bitAt: i - from + 1 put: (cache at: i)
].
cache removeFrom: from to: to.
r >= n ifTrue: [^self next: n].
^r
``````

Modulo reduction is a commonly seen way to make a random integer generator avoid the worst case of running forever.

When the range of possible integers is unknown, however, there is no way in general to "fix" this worst case of running forever without introducing bias. It's not just modulo reduction (`rand() % n`, discussed in the accepted answer) that will introduce bias this way, but also the "multiply-and-shift" reduction of Daniel Lemire, or if you stop rejecting an outcome after a set number of iterations. (To be clear, this doesn't mean there is no way to fix the bias issues present in pseudorandom generators. For example, even though modulo and other reductions are biased in general, they will have no issues with bias if the range of possible integers is a power of 2 and if the random generator produces unbiased random bits or blocks of them.)

The rest of this answer will show the relationship between running time and bias in random generators. From here on, we will assume we have a "true" random generator that can produce unbiased and independent random bits.*

In 1976, D. E. Knuth and A. C. Yao showed that any algorithm that produces random integers with a given probability, using only random bits, can be represented as a binary tree, where random bits indicate which way to traverse the tree and each leaf (endpoint) corresponds to an outcome. In this case, we're dealing with algorithms that generate random integers in [0, n), where each integer is chosen with probability 1/n. The algorithm is unbiased if the same number of leaves appear in the tree for all outcomes. But if 1/n has a non-terminating binary expansion (which will be the case if n is not a power of 2), the algorithm will be unbiased only if—

• the binary tree has an "infinite" depth, or
• the binary tree includes "rejection" leaves at the end,

and in either case, the algorithm won't run in constant time and will run forever in the worst case. (On the other hand, when `n` is a power of 2, the optimal binary tree will have a finite depth and no rejection nodes.)

The binary tree concept also shows that any way to "fix" this worst-case time complexity will lead to bias in general. (Again, this doesn't mean there is no way to fix the bias issues present in pseudorandom generators.) For instance, modulo reductions are equivalent to a binary tree in which rejection leaves are replaced with labeled outcomes — but since there are more possible outcomes than rejection leaves, only some of the outcomes can take the place of the rejection leaves, introducing bias. The same kind of binary tree — and the same kind of bias — results if you stop rejecting after a set number of iterations. (However, this bias may be negligible depending on the application. There are also security aspects to random integer generation, which are too complicated to discuss in this answer.)

To illustrate, the following JavaScript code implements a random integer algorithm called the Fast Dice Roller by J. Lumbroso (2013). Note that it includes a rejection event and a loop which are necessary to make the algorithm unbiased in the general case.

``````function randomInt(minInclusive, maxExclusive) {
var maxInclusive = (maxExclusive - minInclusive) - 1
var x = 1
var y = 0
while(true) {
x = x * 2
var randomBit = (Math.random() < 0.5 ? 0 : 1)
y = y * 2 + randomBit
if(x > maxInclusive) {
if (y <= maxInclusive) { return y + minInclusive }
// Rejection
x = x - maxInclusive - 1
y = y - maxInclusive - 1
}
}
}
``````

### Note

* This answer won't involve the `rand()` function in C because it has many issues. Perhaps the most serious here is the fact that the C standard does not explicitly specify a particular distribution for the numbers returned by `rand()`, not even a uniform distribution.

• Aside from taking care of a shifted range which should have no bearing on OP's Question, (Which IMP in all the answers here including this one only seems to serve to muddy the waters on what is being accomplished). That said this code is seems to just be addressing the same underlying cause of modulus bias itself which is that the RAND_MAX will always be a power of 2, and so when the SET is NOT a Power of 2 then you must discard the values falling into the bad set. This is addressed in my and the accepted answer, but you seem to think it is not.. Jan 6, 2021 at 20:23
• @BenPersonick: My answer says there is no way to "fix" the worst case of running forever without introducing bias, not that there is no way to fix the bias issues present with pseudorandom generators. When the range of integers is unknown, the bias issue can only be solved, in general, through rejection sampling, such as techniques given in your answer or this one, and rejection sampling has an unbounded worst case running time. I will clarify this answer. Jan 7, 2021 at 0:24
• Ah, I gotcha, that was not eminently clear to me that your point was to bring up the implicit issue all of our code presents. Although, practically speaking your chances of it running forever are fairly minute unless the underlying psuedorandum number generation has significant bias. Each round has a chance of being a discard never actually reaching 50%, Jan 7, 2021 at 2:26
• Ie. `2^(N-1)-1` is the max discard (where `N` is the power of 2 that represents the set of ourcomes `RAND_MAX` --- i3 `2^N` is the the count of the set of values that the random function may return while `RAND_MAX` is `2^N-1` ) Thus for ease of review we will call the maximum chance of discard 1/2 each round. Could this go on forever? Yes, it is possible, but, will it? It is exceedingly improbable. Jan 7, 2021 at 3:24
• @BenPersonick: Yes, rejection sampling can be implemented in constant expected time as you mention. Jan 7, 2021 at 3:26

As the accepted answer indicates, "modulo bias" has its roots in the low value of `RAND_MAX`. He uses an extremely small value of `RAND_MAX` (10) to show that if RAND_MAX were 10, then you tried to generate a number between 0 and 2 using %, the following outcomes would result:

``````rand() % 3   // if RAND_MAX were only 10, gives
output of rand()   |   rand()%3
0                  |   0
1                  |   1
2                  |   2
3                  |   0
4                  |   1
5                  |   2
6                  |   0
7                  |   1
8                  |   2
9                  |   0
``````

So there are 4 outputs of 0's (4/10 chance) and only 3 outputs of 1 and 2 (3/10 chances each).

So it's biased. The lower numbers have a better chance of coming out.

But that only shows up so obviously when `RAND_MAX` is small. Or more specifically, when the number your are modding by is large compared to `RAND_MAX`.

A much better solution than looping (which is insanely inefficient and shouldn't even be suggested) is to use a PRNG with a much larger output range. The Mersenne Twister algorithm has a maximum output of 4,294,967,295. As such doing `MersenneTwister::genrand_int32() % 10` for all intents and purposes, will be equally distributed and the modulo bias effect will all but disappear.

• Yours is more efficient and it probably is true that if RAND_MAX is significantly bigger then the number you are modding by, however yours will still be biased. Granted these are all pseudo random number generators anyways and that in and of itself is a different topic but if you assume a fully random number generator, your way still biases the lower values. Apr 16, 2013 at 3:09
• Because the highest value is odd, `MT::genrand_int32()%2` picks 0 (50 + 2.3e-8)% of the time and 1 (50 - 2.3e-8)% of the time. Unless you're building a casino's RGN (which you probably would use a much larger range RGN for), any user is not going to notice an extra 2.3e-8% of the time. You're talking about numbers too small to matter here. Apr 16, 2013 at 4:08
• Looping is the best solution. It is not "insanely inefficient"; requiring less than twice the iterations in worst average case. Using a high `RAND_MAX` value will decrease the modulo bias, but not eliminate it. Looping will. Jul 3, 2013 at 16:22
• If `RAND_MAX` is sufficiently bigger than the number you are modding by, the number of times you need to regenerate the random number is vanishingly small and won't affect the efficiency. I say keep the looping, as long as you're testing against the largest multiple of `n` rather than just `n` as proposed by the accepted answer. Apr 8, 2015 at 1:08

I just wrote a code for Von Neumann's Unbiased Coin Flip Method, that should theoretically eliminate any bias in the random number generation process. More info can be found at (http://en.wikipedia.org/wiki/Fair_coin)

``````int unbiased_random_bit() {
int x1, x2, prev;
prev = 2;
x1 = rand() % 2;
x2 = rand() % 2;

for (;; x1 = rand() % 2, x2 = rand() % 2)
{
if (x1 ^ x2)      // 01 -> 1, or 10 -> 0.
{
return x2;
}
else if (x1 & x2)
{
if (!prev)    // 0011
return 1;
else
prev = 1; // 1111 -> continue, bias unresolved
}
else
{
if (prev == 1)// 1100
return 0;
else          // 0000 -> continue, bias unresolved
prev = 0;
}
}
}
``````
• This doesn't address modulo bias. This process could be used to eliminate bias in a bit stream. However, to get from a bit stream to an even distribution from 0 to n where n is not one less than a power of two requires addressing modulo bias. Thus this solution cannot eliminate any bias in the random number generation process.
– Rick
Aug 5, 2015 at 13:06
• @Rick hmm. The logical extension of Von Neumann's method to eliminating modulo bias when generating a random number between, say, 1 and 100, would be: A) call `rand() % 100` 100 times. B) if all the results are different, take the first one. C) otherwise, GOTO A. This will work, but with an expected number of iterations of about 10^42, you will have to be quite patient. And immortal. Mar 27, 2016 at 11:25
• @MarkAmery Indeed that should work. Looking over this algorithm though it's not correctly implemented. The first else should be: `else if(prev==2) prev= x1; else { if(prev!=x1) return prev; prev=2;}`
– Rick
Mar 28, 2016 at 12:58