std::discrete_distribution of a specified range of random numbers - c++

I know I can use std::discrete_distribution like this:
std::default_random_engine generator;
std::discrete_distribution<int> distribution {2,2,1,1,2,2,1,1,2,2};
int p[10]={};
for (int i=0; i<100; ++i) {
int number = distribution(generator);
++p[number];
}
However, this is going to generate the numbers in the range of 0-9 as per the weight specified.
What can I do to generate the numbers within a user specified range, say for example, 24-33 or 95-104 etc but still using the distribution specified in discrete_distribution ?

You can just add 24 or 95 to the number that is generated. At the beginning you have numbers from 0 to 9, when you add 24 to them you have numbers from 24 to 33.

when you have a function that returns a random number in range [r1,r2), and you want [min,max) mathematics to help.
First we calculate d=(max-min)/(r2-r1) and then we multiply the range [r1,r2) by d so we get [d*r1,d*r2) which we'll make [r1',r2'), now you calculate diff=abs(min-r1)' and sum that to the range [r1',r2'), we used abs because we want the difference without sign, and that my friend will get you the range you want, let's assume the function that returns in range [r1,r2) is somerand() then :
const int r1=0,r2=9
int myrand(const int min,const int max){
const int d=(max-min)/(r2-r1);
const int localrand=d*somerand();
return localrand + abs(min - d*r1);
}
you can check that the function returns min when somerand() returns r1 and your function returns max when somerand() returns r2.
The solution above won't work with e.g. : r1=0,r2=2,min=0,max=3, in short max-min should be divisible by r2-r1.

Related

Random ints with different likelihoods

I was wondering if there was a way to have a random number between A an b and where if a number meets a certain requirement it is more likely to appear than all the other numbers between A and B, for example: Lower numbers are more likely to appear so if A = 1 and B = 10 then 1 would be the likeliest and 10 would be the unlikeliest.
All help is appreciated :) (sorry for bad English/grammar/question)
C++11 (which you should absolutely be using by now) added the <random> header to the C++ standard library. This header provides much higher quality random number generators to C++. Using srand() and rand() has never been a very good idea because there's no guarantee of quality, but now it's truly inexcusable.
In your example, it sounds like you want what would probably be called a 'discrete triangular distribution': the probability mass function looks like a triangle. The easiest (but perhaps not the most efficient) way to implement this in C++ would be the discrete distribution included in <random>:
auto discrete_triangular_distribution(int max) {
std::vector<int> weights(max);
std::iota(weights.begin(), weights.end(), 0);
std::discrete_distribution<> dist(weights.begin(), weights.end());
return dist;
}
int main() {
std::random_device rd;
std::mt19937 gen(rd());
auto&& dist = discrete_triangular_distribution(10);
std::map<int, int> counts;
for (int i = 0; i < 10000; i++)
++counts[dist(gen)];
for (auto count: counts)
std::cout << count.first << " generated ";
std::cout << count.second << " times.\n";
}
which for me gives the following output:
1 generated 233 times.
2 generated 425 times.
3 generated 677 times.
4 generated 854 times.
5 generated 1130 times.
6 generated 1334 times.
7 generated 1565 times.
8 generated 1804 times.
9 generated 1978 times.
Things more complex than this would be better served with either using one of the existing distributions (I have been told that all commonly used statistical distributions are included) or by writing your own distribution, which isn't too hard: it just has to be an object with a function call operator that takes a random bit generator and uses those bits to produce (in this case) random numbers. But you could create one that made random strings, or any arbitrary random objects, perhaps for testing purposes).
Your question doesn't specify which distribution to use. One option (of many) is to use the (negative) exponential distribution. This distribution is parameterized by a parameter λ. For each value of λ, the maximum result is unbounded (which needs to be handled in order to return results only in the range specified)
(from Wikipedia, By Skbkekas, CC BY 3.0)
so any λ could theoretically work; however, the properties of the CDF
(from Wikipedia, By Skbkekas, CC BY 3.0)
imply that it pays to choose something in the order of 1 / (to - from + 1).
The following class works like a standard library distribution. Internally, it generates numbers in a loop, until a result in [from, to] is obtained.
#include <iostream>
#include <iomanip>
#include <string>
#include <map>
#include <random>
class bounded_discrete_exponential_dist {
public:
explicit bounded_discrete_exponential_dist(std::size_t from, std::size_t to) :
m_from{from}, m_to{to}, m_d{0.5 / (to - from + 1)} {}
explicit bounded_discrete_exponential_dist(std::size_t from, std::size_t to, double factor) :
m_from{from}, m_to{to}, m_d{factor} {}
template<class Gen>
std::size_t operator()(Gen &gen) {
while(true) {
const auto r = m_from + static_cast<std::size_t>(m_d(gen));
if(r <= m_to)
return r;
}
}
private:
std::size_t m_from, m_to;
std::exponential_distribution<> m_d;
};
Here is an example of using it:
int main()
{
std::random_device rd;
std::mt19937 gen(rd());
bounded_discrete_exponential_dist d{1, 10};
std::vector<std::size_t> hist(10, 0);
for(std::size_t i = 0; i < 99999; ++i)
++hist[d(gen) - 1];
for(auto h: hist)
std::cout << std::string(static_cast<std::size_t>(80 * h / 99999.), '+') << std::endl;
}
When run, it outputs a histogram like this:
$ ./a.out
++++++++++
+++++++++
+++++++++
++++++++
+++++++
+++++++
+++++++
+++++++
++++++
++++++
Your basic random number generator should produce a high-quality, uniform random numbers on 0 to 1 - epsilon. You then transform it to get the distribution you want. The simplest transform is of course (int) ( p * N) in the common case of needing an integer on 0 to N -1.
But there are many many other transforms you can try. Take the square root, for example, to bias it to 1.0, then 1 - p to set the bias towards zero. Or you can look up the Poisson distribution, which might be what you are after. You can also use a half-Gaussian distribution (statistical bell curve with the zero entries cut off, and presumably also the extreme tail of the distribution as it goes out of range).
There can be no right answer. Try various things, plot out ten thousand or so values, and pick the one that gives results you like.
You can make an array of values, the more likely value has more indexes and then choose a random index.
example:
int random[55];
int result;
int index = 0;
for (int i = 1 ; i <= 10 ; ++i)
for (int j = i ; j <= 10 ; ++j)
random[index++] = i;
result = random[rand() % 55];
Also, you can try to get random number twice, first time you choose the max number then you choose your random number:
int max= rand() % 10 + 1; // This is your max value
int random = rand() % max + 1; // This is you result
Both ways will make 1 more likely than 2 , 2 more likely than 3 ... 9 more likely than 10.

How to generate a list of ascending random integers

I have an external collection containing n elements that I want to select some number (k) of them at random, outputting the indices of those elements to some serialized data file. I want the indices to be output in strict ascending order, and for there to be no duplicates. Both n and k may be quite large, and it is generally not feasible to simply store entire arrays in memory of that size.
The first algorithm I came up with was to pick a random number r[0] from 1 to n-k... and then pick a successive random numbers r[i] from r[i-1]+1 to n-k+i, only needing to store two entries for 'r' at any one time. However, a fairly simple analysis reveals the the probability for selecting small numbers is inconsistent with what could have been if the entire set was equally distributed. For example, if n was a billion and k was half a billion, the probability of selecting the first entry with the approach I've just described is very tiny (1 in half a billion), where in actuality since half of the entries are being selected, the first should be selected 50% of the time. Even if I use external sorting to sort k random numbers, I would have to discard any duplicates, and try again. As k approaches n, the number of retries would continue to grow, with no guarantee of termination.
I would like to find a O(k) or O(k log k) algorithm to do this, if it is at all possible. The implementation language I will be using is C++11, but descriptions in pseudocode may still be helpful.
If in practice k has the same order of magnitude as n, perhaps very straightforward O(n) algorithm will suffice:
assert(k <= n);
std::uniform_real_distribution rnd;
for (int i = 0; i < n; i++) {
if (rnd(engine) * (n - i) < k) {
std::cout << i << std::endl;
k--;
}
}
It produces all ascending sequences with equal probability.
You can solve this recursively in O(k log k) if you partition in the middle of your range, and randomly sample from the hypergeometric probability distribution to choose how many values lie above and below the middle point (i.e. the values of k for each subsequence), then recurse for each:
int sample_hypergeometric(int n, int K, int N) // samples hypergeometric distribution and
// returns number of "successes" where there are n draws without replacement from
// a population of N with K possible successes.
// Something similar to scipy.stats.hypergeom.rvs in Python.
// In this case, "success" means the selected value lying below the midpoint.
{
std::default_random_engine generator;
std::uniform_real_distribution<double> distribution(0.0,1.0);
int successes = 0;
for(int trial = 0; trial < n; trial++)
{
if((int)(distribution(generator) * N) < K)
{
successes++;
K--;
}
N--;
}
return successes;
}
select_k_from_n(int start, int k, int n)
{
if(k == 0)
return;
if(k == 1)
{
output start + random(1 to n);
return;
}
// find the number of results below the mid-point:
int k1 = sample_hypergeometric(k, n >> 1, n);
select_k_from_n(start, k1, n >> 1);
select_k_from_n(start + (n >> 1), k - k1, n - (n >> 1));
}
Sampling from the binomial distribution could also be used to approximate the hypergeometric distribution with p = (n >> 1) / n, rejecting samples where k1 > (n >> 1).
As mentioned in my comment, use a std::set<int> to store the randomly generated integers such that the resulting container is inherently sorted and contains no duplicates. Example code snippet:
#include <random>
#include <set>
int main(void) {
std::set<int> random_set;
std::random_device rd;
std::mt19937 mt_eng(rd());
// min and max of random set range
const int m = 0; // min
const int n = 100; // max
std::uniform_int_distribution<> dist(m,n);
// number to generate
const int k = 50;
for (int i = 0; i < k; ++i) {
// only non-previously occurring values will be inserted
if (!random_set.insert(dist(mt_eng)).second)
--i;
}
}
Assuming that you can't store k random numbers in memory, you'll have to generate the numbers in strict random order. One way to do it would be to generate a number between 0 and n/k. Call that number x. The next number you have to generate is between x+1 and (n-x)/(k-1). Continue in that fashion until you've selected k numbers.
Basically, you're dividing the remaining range by the number of values left to generate, and then generating a number in the first section of that range.
An example. You want to generate 3 numbers between 0 and 99, inclusive. So you first generate a number between 0 and 33. Say you pick 10.
So now you need a number between 11 and 99. The remaining range consists of 89 values, and you have two values left to pick. So, 89/2 = 44. You need a number between 11 and 54. Say you pick 36.
Your remaining range is from 37 to 99, and you have one number left to choose. So pick a number at random between 37 and 99.
This won't give you a normal distribution, as once you choose a number it's impossible to get a number less than that in a subsequent choice. But it might be good enough for your purposes.
This pseudocode shows the basic idea.
pick_k_from_n(n, k)
{
num_left = k
last_k = 0;
while num_left > 0
{
// divide the remaining range into num_left partitions
range_size = (n - last_k) / num_left
// pick a number in the first partition
r = random(range_size) + last_k + 1
output(r)
last_k = r
num_left = num_left - 1
}
}
Note that this takes O(k) time and requires O(1) extra space.
You can do it in O(k) time with Floyd's algorithm (not Floyd-Warshall, that's a shortest path thing). The only data structure you need is a 1-bit table that will tell you whether or not a number has already been selected. Searching a hash table can be O(1), so this will not be a burden, and can be kept in memory even for very large n (if n is truly huge, you'll have to use a b-tree or bloom filter or something).
To select k items from among n:
for j = n-k+1 to n:
select random x from 1 to j
if x is already in hash:
insert j into hash
else
insert x into hash
That's it. At the end, your hash table will contain a uniformly selected sample of k items from among n. Read them out in order (you may have to pick a type of hash table that allows that).
Could you adjust each ascending index selection in a way that compensates for the probability distortion you are describing?
IANAS, but my guess would be that if you pick a random number r between 0 and 1 (that you'll scale to the full remaining index range after the adjustment), you might be able to adjust it by calculating r^(x) (keeping the range in 0..1, but increasing the probability of smaller numbers), with x selected by solving the equation for the probability of the first entry?
Here's an O(k log k + √n)-time algorithm that uses O(√n) words of space. This can be generalized to an O(k + n^(1/c))-time, O(n^(1/c))-space algorithm for any integer constant c.
For intuition, imagine a simple algorithm that uses (e.g.) Floyd's sampling algorithm to generate k of n elements and then radix sorts them in base √n. Instead of remembering what the actual samples are, we'll do a first pass where we run a variant of Floyd's where we remember only the number of samples in each bucket. The second pass is, for each bucket in order, to randomly resample the appropriate number of elements from the bucket range. There's a short proof involving conditional probability that this gives a uniform distribution.
# untested Python code for illustration
# b is the number of buckets (e.g., b ~ sqrt(n))
import random
def first_pass(n, k, b):
counts = [0] * b # list of b zeros
for j in range(n - k, n):
t = random.randrange(j + 1)
if t // b >= counts[t % b]: # intuitively, "t is not in the set"
counts[t % b] += 1
else:
counts[j % b] += 1
return counts

How to generate negative random integer in c++

I wrote a function that takes integers. It won't crash if the user types for example, -5, but it will convert it into positive =-(
int getRandoms(int size, int upper, int lower)
{
int randInt = 0;
randInt = 1 + rand() % (upper -lower + 1);
return randInt;
}
What should I change in the function in order to build random negative integers?
The user inputs the range.
There are two answers to this, if you are using C++11 then you should be using uniform_int_distribtion, it is preferable for many reasons for example Why do people say there is modulo bias when using a random number generator? is one example and rand() Considered Harmful presentation gives a more complete set of reasons. Here is an example which generates random integers from -5 to 5:
#include <iostream>
#include <random>
int main()
{
std::random_device rd;
std::mt19937 e2(rd());
std::uniform_int_distribution<int> dist(-5, 5);
for (int n = 0; n < 10; ++n) {
std::cout << dist(e2) << ", " ;
}
std::cout << std::endl ;
}
If C++11 is not an option then the method described in C FAQ in How can I get random integers in a certain range? is the way to go. Using that method you would do the following to generate random integers from [M, N]:
M + rand() / (RAND_MAX / (N - M + 1) + 1)
For a number in the closed range [lower,upper], you want:
return lower + rand() % (upper - lower + 1); // NOT 1 + ...
This will work for positive or negative values, as long as upper is greater than or equal to lower.
Your version returns numbers from a range of the same size, but starting from 1 rather than lower.
You could also use Boost.Random, if you don't mind the dependency. http://www.boost.org/doc/libs/1_54_0/doc/html/boost_random.html
You want to start by computing the range of the numbers, so (for example) -10 to +5 is a range of 15.
You can compute numbers in that range with code like this:
int rand_lim(int limit) {
/* return a random number in the range [0..limit)
*/
int divisor = RAND_MAX/limit;
int retval;
do {
retval = rand() / divisor;
} while (retval == limit);
return retval;
}
Having done that, getting the numbers to the correct range is pretty trivial: add the lower bound to each number you get.
Note that C++11 has added both random number generator and distribution classes that can take care of most of this for you.
If you do attempt to do this on your own, when you reduce numbers to a range, you pretty much need to use a loop as I've shown above to avoid skew. Essentially any attempt at just using division or remainder on its own almost inevitably introduces skew into the result (i.e., some results will happen more often than others).
You only need to sum to the lower-bound of the range [lbound, ubound]:
int rangesize = ubound - lbound + 1;
int myradnom = (rand() % rangesize) + lbound;

What is the most efficient way to generate unique pseudo-random numbers? [duplicate]

Duplicate:
Unique random numbers in O(1)?
I want an pseudo random number generator that can generate numbers with no repeats in a random order.
For example:
random(10)
might return
5, 9, 1, 4, 2, 8, 3, 7, 6, 10
Is there a better way to do it other than making the range of numbers and shuffling them about, or checking the generated list for repeats?
Edit:
Also I want it to be efficient in generating big numbers without the entire range.
Edit:
I see everyone suggesting shuffle algorithms. But if I want to generate large random number (1024 byte+) then that method would take alot more memory than if I just used a regular RNG and inserted into a Set until it was a specified length, right? Is there no better mathematical algorithm for this.
You may be interested in a linear feedback shift register.
We used to build these out of hardware, but I've also done them in software. It uses a shift register with some of the bits xor'ed and fed back to the input, and if you pick just the right "taps" you can get a sequence that's as long as the register size. That is, a 16-bit lfsr can produce a sequence 65535 long with no repeats. It's statistically random but of course eminently repeatable. Also, if it's done wrong, you can get some embarrassingly short sequences. If you look up the lfsr, you will find examples of how to construct them properly (which is to say, "maximal length").
A shuffle is a perfectly good way to do this (provided you do not introduce a bias using the naive algorithm). See Fisher-Yates shuffle.
If a random number is guaranteed to never repeat it is no longer random and the amount of randomness decreases as the numbers are generated (after nine numbers random(10) is rather predictable and even after only eight you have a 50-50 chance).
I understand tou don't want a shuffle for large ranges, since you'd have to store the whole list to do so.
Instead, use a reversible pseudo-random hash. Then feed in the values 0 1 2 3 4 5 6 etc in turn.
There are infinite numbers of hashes like this. They're not too hard to generate if they're restricted to a power of 2, but any base can be used.
Here's one that would work for example if you wanted to go through all 2^32 32 bit values. It's easiest to write because the implicit mod 2^32 of integer math works to your advantage in this case.
unsigned int reversableHash(unsigned int x)
{
x*=0xDEADBEEF;
x=x^(x>>17);
x*=0x01234567;
x+=0x88776655;
x=x^(x>>4);
x=x^(x>>9);
x*=0x91827363;
x=x^(x>>7);
x=x^(x>>11);
x=x^(x>>20);
x*=0x77773333;
return x;
}
If you don't mind mediocre randomness properties and if the number of elements allows it then you could use a linear congruential random number generator.
A shuffle is the best you can do for random numbers in a specific range with no repeats. The reason that the method you describe (randomly generate numbers and put them in a Set until you reach a specified length) is less efficient is because of duplicates. Theoretically, that algorithm might never finish. At best it will finish in an indeterminable amount of time, as compared to a shuffle, which will always run in a highly predictable amount of time.
Response to edits and comments:
If, as you indicate in the comments, the range of numbers is very large and you want to select relatively few of them at random with no repeats, then the likelihood of repeats diminishes rapidly. The bigger the difference in size between the range and the number of selections, the smaller the likelihood of repeat selections, and the better the performance will be for the select-and-check algorithm you describe in the question.
What about using GUID generator (like in the one in .NET). Granted it is not guaranteed that there will be no duplicates, however the chance getting one is pretty low.
This has been asked before - see my answer to the previous question. In a nutshell: You can use a block cipher to generate a secure (random) permutation over any range you want, without having to store the entire permutation at any point.
If you want to creating large (say, 64 bits or greater) random numbers with no repeats, then just create them. If you're using a good random number generator, that actually has enough entropy, then the odds of generating repeats are so miniscule as to not be worth worrying about.
For instance, when generating cryptographic keys, no one actually bothers checking to see if they've generated the same key before; since you're trusting your random number generator that a dedicated attacker won't be able to get the same key out, then why would you expect that you would come up with the same key accidentally?
Of course, if you have a bad random number generator (like the Debian SSL random number generator vulnerability), or are generating small enough numbers that the birthday paradox gives you a high chance of collision, then you will need to actually do something to ensure you don't get repeats. But for large random numbers with a good generator, just trust probability not to give you any repeats.
As you generate your numbers, use a Bloom filter to detect duplicates. This would use a minimal amount of memory. There would be no need to store earlier numbers in the series at all.
The trade off is that your list could not be exhaustive in your range. If your numbers are truly on the order of 256^1024, that's hardly any trade off at all.
(Of course if they are actually random on that scale, even bothering to detect duplicates is a waste of time. If every computer on earth generated a trillion random numbers that size every second for trillions of years, the chance of a collision is still absolutely negligible.)
I second gbarry's answer about using an LFSR. They are very efficient and simple to implement even in software and are guaranteed not to repeat in (2^N - 1) uses for an LFSR with an N-bit shift-register.
There are some drawbacks however: by observing a small number of outputs from the RNG, one can reconstruct the LFSR and predict all values it will generate, making them not usable for cryptography and anywhere were a good RNG is needed. The second problem is that either the all zero word or the all one (in terms of bits) word is invalid depending on the LFSR implementation. The third issue which is relevant to your question is that the maximum number generated by the LFSR is always a power of 2 - 1 (or power of 2 - 2).
The first drawback might not be an issue depending on your application. From the example you gave, it seems that you are not expecting zero to be among the answers; so, the second issue does not seem relevant to your case.
The maximum value (and thus range) problem can solved by reusing the LFSR until you get a number within your range. Here's an example:
Say you want to have numbers between 1 and 10 (as in your example). You would use a 4-bit LFSR which has a range [1, 15] inclusive. Here's a pseudo code as to how to get number in the range [1,10]:
x = LFSR.getRandomNumber();
while (x > 10) {
x = LFSR.getRandomNumber();
}
You should embed the previous code in your RNG; so that the caller wouldn't care about implementation.
Note that this would slow down your RNG if you use a large shift-register and the maximum number you want is not a power of 2 - 1.
This answer suggests some strategies for getting what you want and ensuring they are in a random order using some already well-known algorithms.
There is an inside out version of the Fisher-Yates shuffle algorithm, called the Durstenfeld version, that randomly distributes sequentially acquired items into arrays and collections while loading the array or collection.
One thing to remember is that the Fisher-Yates (AKA Knuth) shuffle or the Durstenfeld version used at load time is highly efficient with arrays of objects because only the reference pointer to the object is being moved and the object itself doesn't have to be examined or compared with any other object as part of the algorithm.
I will give both algorithms further below.
If you want really huge random numbers, on the order of 1024 bytes or more, a really good random generator that can generate unsigned bytes or words at a time will suffice. Randomly generate as many bytes or words as you need to construct the number, make it into an object with a reference pointer to it and, hey presto, you have a really huge random integer. If you need a specific really huge range, you can add a base value of zero bytes to the low-order end of the byte sequence to shift the value up. This may be your best option.
If you need to eliminate duplicates of really huge random numbers, then that is trickier. Even with really huge random numbers, removing duplicates also makes them significantly biased and not random at all. If you have a really large set of unduplicated really huge random numbers and you randomly select from the ones not yet selected, then the bias is only the bias in creating the huge values for the really huge set of numbers from which to choose. A reverse version of Durstenfeld's version of the Yates-Fisher could be used to randomly choose values from a really huge set of them, remove them from the remaining values from which to choose and insert them into a new array that is a subset and could do this with just the source and target arrays in situ. This would be very efficient.
This may be a good strategy for getting a small number of random numbers with enormous values from a really large set of them in which they are not duplicated. Just pick a random location in the source set, obtain its value, swap its value with the top element in the source set, reduce the size of the source set by one and repeat with the reduced size source set until you have chosen enough values. This is essentiall the Durstenfeld version of Fisher-Yates in reverse. You can then use the Dursenfeld version of the Fisher-Yates algorithm to insert the acquired values into the destination set. However, that is overkill since they should be randomly chosen and randomly ordered as given here.
Both algorithms assume you have some random number instance method, nextInt(int setSize), that generates a random integer from zero to setSize meaning there are setSize possible values. In this case, it will be the size of the array since the last index to the array is size-1.
The first algorithm is the Durstenfeld version of Fisher-Yates (aka Knuth) shuffle algorithm as applied to an array of arbitrary length, one that simply randomly positions integers from 0 to the length of the array into the array. The array need not be an array of integers, but can be an array of any objects that are acquired sequentially which, effectively, makes it an array of reference pointers. It is simple, short and very effective
int size = someNumber;
int[] int array = new int[size]; // here is the array to load
int location; // this will get assigned a value before used
// i will also conveniently be the value to load, but any sequentially acquired
// object will work
for (int i = 0; i <= size; i++) { // conveniently, i is also the value to load
// you can instance or acquire any object at this place in the algorithm to load
// by reference, into the array and use a pointer to it in place of j
int j = i; // in this example, j is trivially i
if (i == 0) { // first integer goes into first location
array[i] = j; // this may get swapped from here later
} else { // subsequent integers go into random locations
// the next random location will be somewhere in the locations
// already used or a new one at the end
// here we get the next random location
// to preserve true randomness without a significant bias
// it is REALLY IMPORTANT that the newest value could be
// stored in the newest location, that is,
// location has to be able to randomly have the value i
int location = nextInt(i + 1); // a random value between 0 and i
// move the random location's value to the new location
array[i] = array[location];
array[location] = j; // put the new value into the random location
} // end if...else
} // end for
Voila, you now have an already randomized array.
If you want to randomly shuffle an array you already have, here is the standard Fisher-Yates algorithm.
type[] array = new type[size];
// some code that loads array...
// randomly pick an item anywhere in the current array segment,
// swap it with the top element in the current array segment,
// then shorten the array segment by 1
// just as with the Durstenfeld version above,
// it is REALLY IMPORTANT that an element could get
// swapped with itself to avoid any bias in the randomization
type temp; // this will get assigned a value before used
int location; // this will get assigned a value before used
for (int i = arrayLength -1 ; i > 0; i--) {
int location = nextInt(i + 1);
temp = array[i];
array[i] = array[location];
array[location] = temp;
} // end for
For sequenced collections and sets, i.e. some type of list object, you could just use adds/or inserts with an index value that allows you to insert items anywhere, but it has to allow adding or appending after the current last item to avoid creating bias in the randomization.
Shuffling N elements doesn't take up excessive memory...think about it. You only swap one element at a time, so the maximum memory used is that of N+1 elements.
Assuming you have a random or pseudo-random number generator, even if it's not guaranteed to return unique values, you can implement one that returns unique values each time using this code, assuming that the upper limit remains constant (i.e. you always call it with random(10), and don't call it with random(10); random(11).
The code doesn't check for errors. You can add that yourself if you want to.
It also requires a lot of memory if you want a large range of numbers.
/* the function returns a random number between 0 and max -1
* not necessarily unique
* I assume it's written
*/
int random(int max);
/* the function returns a unique random number between 0 and max - 1 */
int unique_random(int max)
{
static int *list = NULL; /* contains a list of numbers we haven't returned */
static int in_progress = 0; /* 0 --> we haven't started randomizing numbers
* 1 --> we have started randomizing numbers
*/
static int count;
static prev_max = 0;
// initialize the list
if (!in_progress || (prev_max != max)) {
if (list != NULL) {
free(list);
}
list = malloc(sizeof(int) * max);
prev_max = max;
in_progress = 1;
count = max - 1;
int i;
for (i = max - 1; i >= 0; --i) {
list[i] = i;
}
}
/* now choose one from the list */
int index = random(count);
int retval = list[index];
/* now we throw away the returned value.
* we do this by shortening the list by 1
* and replacing the element we returned with
* the highest remaining number
*/
swap(&list[index], &list[count]);
/* when the count reaches 0 we start over */
if (count == 0) {
in_progress = 0;
free(list);
list = 0;
} else { /* reduce the counter by 1 */
count--;
}
}
/* swap two numbers */
void swap(int *x, int *y)
{
int temp = *x;
*x = *y;
*y = temp;
}
Actually, there's a minor point to make here; a random number generator which is not permitted to repeat is not random.
Suppose you wanted to generate a series of 256 random numbers without repeats.
Create a 256-bit (32-byte) memory block initialized with zeros, let's call it b
Your looping variable will be n, the number of numbers yet to be generated
Loop from n = 256 to n = 1
Generate a random number r in the range [0, n)
Find the r-th zero bit in your memory block b, let's call it p
Put p in your list of results, an array called q
Flip the p-th bit in memory block b to 1
After the n = 1 pass, you are done generating your list of numbers
Here's a short example of what I am talking about, using n = 4 initially:
**Setup**
b = 0000
q = []
**First loop pass, where n = 4**
r = 2
p = 2
b = 0010
q = [2]
**Second loop pass, where n = 3**
r = 2
p = 3
b = 0011
q = [2, 3]
**Third loop pass, where n = 2**
r = 0
p = 0
b = 1011
q = [2, 3, 0]
** Fourth and final loop pass, where n = 1**
r = 0
p = 1
b = 1111
q = [2, 3, 0, 1]
Please check answers at
Generate sequence of integers in random order without constructing the whole list upfront
and also my answer lies there as
very simple random is 1+((power(r,x)-1) mod p) will be from 1 to p for values of x from 1 to p and will be random where r and p are prime numbers and r <> p.
I asked a similar question before but mine was for the whole range of a int see Looking for a Hash Function /Ordered Int/ to /Shuffled Int/
static std::unordered_set<long> s;
long l = 0;
for(; !l && (s.end() != s.find(l)); l = generator());
v.insert(l);
generator() being your random number generator. You roll numbers as long as the entry is not in your set, then you add what you find in it. You get the idea.
I did it with long for the example, but you should make that a template if your PRNG is templatized.
Alternative is to use a cryptographically secure PRNG that will have a very low probability to generate twice the same number.
If you don't mean poor statisticall properties of generated sequence, there is one method:
Let's say you want to generate N numbers, each of 1024 bits each. You can sacrifice some bits of generated number to be "counter".
So you generate each random number, but into some bits you choosen you put binary encoded counter (from variable, you increase each time next random number is generated).
You can split that number into single bits and put it in some of less significant bits of generated number.
That way you are sure you get unique number each time.
I mean for example each generated number looks like that:
xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxyyxxxxyxyyyyxxyxx
where x is take directly from generator, and ys are taken from counter variable.
Mersenne twister
Description of which can be found here on Wikipedia: Mersenne twister
Look at the bottom of the page for implementations in various languages.
The problem is to select a "random" sequence of N unique numbers from the range 1..M where there is no constraint on the relationship between N and M (M could be much bigger, about the same, or even smaller than N; they may not be relatively prime).
Expanding on the linear feedback shift register answer: for a given M, construct a maximal LFSR for the smallest power of two that is larger than M. Then just grab your numbers from the LFSR throwing out numbers larger than M. On average, you will throw out at most half the generated numbers (since by construction more than half the range of the LFSR is less than M), so the expected running time of getting a number is O(1). You are not storing previously generated numbers so space consumption is O(1) too. If you cycle before getting N numbers then M less than N (or the LFSR is constructed incorrectly).
You can find the parameters for maximum length LFSRs up to 168 bits here (from wikipedia): http://www.xilinx.com/support/documentation/application_notes/xapp052.pdf
Here's some java code:
/**
* Generate a sequence of unique "random" numbers in [0,M)
* #author dkoes
*
*/
public class UniqueRandom
{
long lfsr;
long mask;
long max;
private static long seed = 1;
//indexed by number of bits
private static int [][] taps = {
null, // 0
null, // 1
null, // 2
{3,2}, //3
{4,3},
{5,3},
{6,5},
{7,6},
{8,6,5,4},
{9,5},
{10,7},
{11,9},
{12,6,4,1},
{13,4,3,1},
{14,5,3,1},
{15,14},
{16,15,13,4},
{17,14},
{18,11},
{19,6,2,1},
{20,17},
{21,19},
{22,21},
{23,18},
{24,23,22,17},
{25,22},
{26,6,2,1},
{27,5,2,1},
{28,25},
{29,27},
{30,6,4,1},
{31,28},
{32,22,2,1},
{33,20},
{34,27,2,1},
{35,33},
{36,25},
{37,5,4,3,2,1},
{38,6,5,1},
{39,35},
{40,38,21,19},
{41,38},
{42,41,20,19},
{43,42,38,37},
{44,43,18,17},
{45,44,42,41},
{46,45,26,25},
{47,42},
{48,47,21,20},
{49,40},
{50,49,24,23},
{51,50,36,35},
{52,49},
{53,52,38,37},
{54,53,18,17},
{55,31},
{56,55,35,34},
{57,50},
{58,39},
{59,58,38,37},
{60,59},
{61,60,46,45},
{62,61,6,5},
{63,62},
};
//m is upperbound; things break if it isn't positive
UniqueRandom(long m)
{
max = m;
lfsr = seed; //could easily pass a starting point instead
//figure out number of bits
int bits = 0;
long b = m;
while((b >>>= 1) != 0)
{
bits++;
}
bits++;
if(bits < 3)
bits = 3;
mask = 0;
for(int i = 0; i < taps[bits].length; i++)
{
mask |= (1L << (taps[bits][i]-1));
}
}
//return -1 if we've cycled
long next()
{
long ret = -1;
if(lfsr == 0)
return -1;
do {
ret = lfsr;
//update lfsr - from wikipedia
long lsb = lfsr & 1;
lfsr >>>= 1;
if(lsb == 1)
lfsr ^= mask;
if(lfsr == seed)
lfsr = 0; //cycled, stick
ret--; //zero is stuck state, never generated so sub 1 to get it
} while(ret >= max);
return ret;
}
}
Here is a way to random without repeating results. It also works for strings. Its in C# but the logig should work in many places. Put the random results in a list and check if the new random element is in that list. If not than you have a new random element. If it is in that list, repeat the random until you get an element that is not in that list.
List<string> Erledigte = new List<string>();
private void Form1_Load(object sender, EventArgs e)
{
label1.Text = "";
listBox1.Items.Add("a");
listBox1.Items.Add("b");
listBox1.Items.Add("c");
listBox1.Items.Add("d");
listBox1.Items.Add("e");
}
private void button1_Click(object sender, EventArgs e)
{
Random rand = new Random();
int index=rand.Next(0, listBox1.Items.Count);
string rndString = listBox1.Items[index].ToString();
if (listBox1.Items.Count <= Erledigte.Count)
{
return;
}
else
{
if (Erledigte.Contains(rndString))
{
//MessageBox.Show("vorhanden");
while (Erledigte.Contains(rndString))
{
index = rand.Next(0, listBox1.Items.Count);
rndString = listBox1.Items[index].ToString();
}
}
Erledigte.Add(rndString);
label1.Text += rndString;
}
}
For a sequence to be random there should not be any auto correlation. The restriction that the numbers should not repeat means the next number should depend on all the previous numbers which means it is not random anymore....
If you can generate 'small' random numbers, you can generate 'large' random numbers by integrating them: add a small random increment to each 'previous'.
const size_t amount = 100; // a limited amount of random numbers
vector<long int> numbers;
numbers.reserve( amount );
const short int spread = 250; // about 250 between each random number
numbers.push_back( myrandom( spread ) );
for( int n = 0; n != amount; ++n ) {
const short int increment = myrandom( spread );
numbers.push_back( numbers.back() + increment );
}
myshuffle( numbers );
The myrandom and myshuffle functions I hereby generously delegate to others :)
to have non repeated random numbers and to avoid waistingtime with checking for doubles numbers and get new numbers over and over use the below method which will assure the minimum usage of Rand:
for example if you want to get 100 non repeated random number:
1. fill an array with numbers from 1 to 100
2. get a random number using Rand function in the range of (1-100)
3. use the genarted random number as an Index to get th value from the array (Numbers[IndexGeneratedFromRandFunction]
4. shift the number in the array after that Index to the left
5. repeat from step 2 but now the the rang should be (1-99) and go on
now we have a array with different numbers!
int main() {
int b[(the number
if them)];
for (int i = 0; i < (the number of them); i++) {
int a = rand() % (the number of them + 1) + 1;
int j = 0;
while (j < i) {
if (a == b[j]) {
a = rand() % (the number of them + 1) + 1;
j = -1;
}
j++;
}
b[i] = a;
}
}

Create Random Number Sequence with No Repeats

Duplicate:
Unique random numbers in O(1)?
I want an pseudo random number generator that can generate numbers with no repeats in a random order.
For example:
random(10)
might return
5, 9, 1, 4, 2, 8, 3, 7, 6, 10
Is there a better way to do it other than making the range of numbers and shuffling them about, or checking the generated list for repeats?
Edit:
Also I want it to be efficient in generating big numbers without the entire range.
Edit:
I see everyone suggesting shuffle algorithms. But if I want to generate large random number (1024 byte+) then that method would take alot more memory than if I just used a regular RNG and inserted into a Set until it was a specified length, right? Is there no better mathematical algorithm for this.
You may be interested in a linear feedback shift register.
We used to build these out of hardware, but I've also done them in software. It uses a shift register with some of the bits xor'ed and fed back to the input, and if you pick just the right "taps" you can get a sequence that's as long as the register size. That is, a 16-bit lfsr can produce a sequence 65535 long with no repeats. It's statistically random but of course eminently repeatable. Also, if it's done wrong, you can get some embarrassingly short sequences. If you look up the lfsr, you will find examples of how to construct them properly (which is to say, "maximal length").
A shuffle is a perfectly good way to do this (provided you do not introduce a bias using the naive algorithm). See Fisher-Yates shuffle.
If a random number is guaranteed to never repeat it is no longer random and the amount of randomness decreases as the numbers are generated (after nine numbers random(10) is rather predictable and even after only eight you have a 50-50 chance).
I understand tou don't want a shuffle for large ranges, since you'd have to store the whole list to do so.
Instead, use a reversible pseudo-random hash. Then feed in the values 0 1 2 3 4 5 6 etc in turn.
There are infinite numbers of hashes like this. They're not too hard to generate if they're restricted to a power of 2, but any base can be used.
Here's one that would work for example if you wanted to go through all 2^32 32 bit values. It's easiest to write because the implicit mod 2^32 of integer math works to your advantage in this case.
unsigned int reversableHash(unsigned int x)
{
x*=0xDEADBEEF;
x=x^(x>>17);
x*=0x01234567;
x+=0x88776655;
x=x^(x>>4);
x=x^(x>>9);
x*=0x91827363;
x=x^(x>>7);
x=x^(x>>11);
x=x^(x>>20);
x*=0x77773333;
return x;
}
If you don't mind mediocre randomness properties and if the number of elements allows it then you could use a linear congruential random number generator.
A shuffle is the best you can do for random numbers in a specific range with no repeats. The reason that the method you describe (randomly generate numbers and put them in a Set until you reach a specified length) is less efficient is because of duplicates. Theoretically, that algorithm might never finish. At best it will finish in an indeterminable amount of time, as compared to a shuffle, which will always run in a highly predictable amount of time.
Response to edits and comments:
If, as you indicate in the comments, the range of numbers is very large and you want to select relatively few of them at random with no repeats, then the likelihood of repeats diminishes rapidly. The bigger the difference in size between the range and the number of selections, the smaller the likelihood of repeat selections, and the better the performance will be for the select-and-check algorithm you describe in the question.
What about using GUID generator (like in the one in .NET). Granted it is not guaranteed that there will be no duplicates, however the chance getting one is pretty low.
This has been asked before - see my answer to the previous question. In a nutshell: You can use a block cipher to generate a secure (random) permutation over any range you want, without having to store the entire permutation at any point.
If you want to creating large (say, 64 bits or greater) random numbers with no repeats, then just create them. If you're using a good random number generator, that actually has enough entropy, then the odds of generating repeats are so miniscule as to not be worth worrying about.
For instance, when generating cryptographic keys, no one actually bothers checking to see if they've generated the same key before; since you're trusting your random number generator that a dedicated attacker won't be able to get the same key out, then why would you expect that you would come up with the same key accidentally?
Of course, if you have a bad random number generator (like the Debian SSL random number generator vulnerability), or are generating small enough numbers that the birthday paradox gives you a high chance of collision, then you will need to actually do something to ensure you don't get repeats. But for large random numbers with a good generator, just trust probability not to give you any repeats.
As you generate your numbers, use a Bloom filter to detect duplicates. This would use a minimal amount of memory. There would be no need to store earlier numbers in the series at all.
The trade off is that your list could not be exhaustive in your range. If your numbers are truly on the order of 256^1024, that's hardly any trade off at all.
(Of course if they are actually random on that scale, even bothering to detect duplicates is a waste of time. If every computer on earth generated a trillion random numbers that size every second for trillions of years, the chance of a collision is still absolutely negligible.)
I second gbarry's answer about using an LFSR. They are very efficient and simple to implement even in software and are guaranteed not to repeat in (2^N - 1) uses for an LFSR with an N-bit shift-register.
There are some drawbacks however: by observing a small number of outputs from the RNG, one can reconstruct the LFSR and predict all values it will generate, making them not usable for cryptography and anywhere were a good RNG is needed. The second problem is that either the all zero word or the all one (in terms of bits) word is invalid depending on the LFSR implementation. The third issue which is relevant to your question is that the maximum number generated by the LFSR is always a power of 2 - 1 (or power of 2 - 2).
The first drawback might not be an issue depending on your application. From the example you gave, it seems that you are not expecting zero to be among the answers; so, the second issue does not seem relevant to your case.
The maximum value (and thus range) problem can solved by reusing the LFSR until you get a number within your range. Here's an example:
Say you want to have numbers between 1 and 10 (as in your example). You would use a 4-bit LFSR which has a range [1, 15] inclusive. Here's a pseudo code as to how to get number in the range [1,10]:
x = LFSR.getRandomNumber();
while (x > 10) {
x = LFSR.getRandomNumber();
}
You should embed the previous code in your RNG; so that the caller wouldn't care about implementation.
Note that this would slow down your RNG if you use a large shift-register and the maximum number you want is not a power of 2 - 1.
This answer suggests some strategies for getting what you want and ensuring they are in a random order using some already well-known algorithms.
There is an inside out version of the Fisher-Yates shuffle algorithm, called the Durstenfeld version, that randomly distributes sequentially acquired items into arrays and collections while loading the array or collection.
One thing to remember is that the Fisher-Yates (AKA Knuth) shuffle or the Durstenfeld version used at load time is highly efficient with arrays of objects because only the reference pointer to the object is being moved and the object itself doesn't have to be examined or compared with any other object as part of the algorithm.
I will give both algorithms further below.
If you want really huge random numbers, on the order of 1024 bytes or more, a really good random generator that can generate unsigned bytes or words at a time will suffice. Randomly generate as many bytes or words as you need to construct the number, make it into an object with a reference pointer to it and, hey presto, you have a really huge random integer. If you need a specific really huge range, you can add a base value of zero bytes to the low-order end of the byte sequence to shift the value up. This may be your best option.
If you need to eliminate duplicates of really huge random numbers, then that is trickier. Even with really huge random numbers, removing duplicates also makes them significantly biased and not random at all. If you have a really large set of unduplicated really huge random numbers and you randomly select from the ones not yet selected, then the bias is only the bias in creating the huge values for the really huge set of numbers from which to choose. A reverse version of Durstenfeld's version of the Yates-Fisher could be used to randomly choose values from a really huge set of them, remove them from the remaining values from which to choose and insert them into a new array that is a subset and could do this with just the source and target arrays in situ. This would be very efficient.
This may be a good strategy for getting a small number of random numbers with enormous values from a really large set of them in which they are not duplicated. Just pick a random location in the source set, obtain its value, swap its value with the top element in the source set, reduce the size of the source set by one and repeat with the reduced size source set until you have chosen enough values. This is essentiall the Durstenfeld version of Fisher-Yates in reverse. You can then use the Dursenfeld version of the Fisher-Yates algorithm to insert the acquired values into the destination set. However, that is overkill since they should be randomly chosen and randomly ordered as given here.
Both algorithms assume you have some random number instance method, nextInt(int setSize), that generates a random integer from zero to setSize meaning there are setSize possible values. In this case, it will be the size of the array since the last index to the array is size-1.
The first algorithm is the Durstenfeld version of Fisher-Yates (aka Knuth) shuffle algorithm as applied to an array of arbitrary length, one that simply randomly positions integers from 0 to the length of the array into the array. The array need not be an array of integers, but can be an array of any objects that are acquired sequentially which, effectively, makes it an array of reference pointers. It is simple, short and very effective
int size = someNumber;
int[] int array = new int[size]; // here is the array to load
int location; // this will get assigned a value before used
// i will also conveniently be the value to load, but any sequentially acquired
// object will work
for (int i = 0; i <= size; i++) { // conveniently, i is also the value to load
// you can instance or acquire any object at this place in the algorithm to load
// by reference, into the array and use a pointer to it in place of j
int j = i; // in this example, j is trivially i
if (i == 0) { // first integer goes into first location
array[i] = j; // this may get swapped from here later
} else { // subsequent integers go into random locations
// the next random location will be somewhere in the locations
// already used or a new one at the end
// here we get the next random location
// to preserve true randomness without a significant bias
// it is REALLY IMPORTANT that the newest value could be
// stored in the newest location, that is,
// location has to be able to randomly have the value i
int location = nextInt(i + 1); // a random value between 0 and i
// move the random location's value to the new location
array[i] = array[location];
array[location] = j; // put the new value into the random location
} // end if...else
} // end for
Voila, you now have an already randomized array.
If you want to randomly shuffle an array you already have, here is the standard Fisher-Yates algorithm.
type[] array = new type[size];
// some code that loads array...
// randomly pick an item anywhere in the current array segment,
// swap it with the top element in the current array segment,
// then shorten the array segment by 1
// just as with the Durstenfeld version above,
// it is REALLY IMPORTANT that an element could get
// swapped with itself to avoid any bias in the randomization
type temp; // this will get assigned a value before used
int location; // this will get assigned a value before used
for (int i = arrayLength -1 ; i > 0; i--) {
int location = nextInt(i + 1);
temp = array[i];
array[i] = array[location];
array[location] = temp;
} // end for
For sequenced collections and sets, i.e. some type of list object, you could just use adds/or inserts with an index value that allows you to insert items anywhere, but it has to allow adding or appending after the current last item to avoid creating bias in the randomization.
Shuffling N elements doesn't take up excessive memory...think about it. You only swap one element at a time, so the maximum memory used is that of N+1 elements.
Assuming you have a random or pseudo-random number generator, even if it's not guaranteed to return unique values, you can implement one that returns unique values each time using this code, assuming that the upper limit remains constant (i.e. you always call it with random(10), and don't call it with random(10); random(11).
The code doesn't check for errors. You can add that yourself if you want to.
It also requires a lot of memory if you want a large range of numbers.
/* the function returns a random number between 0 and max -1
* not necessarily unique
* I assume it's written
*/
int random(int max);
/* the function returns a unique random number between 0 and max - 1 */
int unique_random(int max)
{
static int *list = NULL; /* contains a list of numbers we haven't returned */
static int in_progress = 0; /* 0 --> we haven't started randomizing numbers
* 1 --> we have started randomizing numbers
*/
static int count;
static prev_max = 0;
// initialize the list
if (!in_progress || (prev_max != max)) {
if (list != NULL) {
free(list);
}
list = malloc(sizeof(int) * max);
prev_max = max;
in_progress = 1;
count = max - 1;
int i;
for (i = max - 1; i >= 0; --i) {
list[i] = i;
}
}
/* now choose one from the list */
int index = random(count);
int retval = list[index];
/* now we throw away the returned value.
* we do this by shortening the list by 1
* and replacing the element we returned with
* the highest remaining number
*/
swap(&list[index], &list[count]);
/* when the count reaches 0 we start over */
if (count == 0) {
in_progress = 0;
free(list);
list = 0;
} else { /* reduce the counter by 1 */
count--;
}
}
/* swap two numbers */
void swap(int *x, int *y)
{
int temp = *x;
*x = *y;
*y = temp;
}
Actually, there's a minor point to make here; a random number generator which is not permitted to repeat is not random.
Suppose you wanted to generate a series of 256 random numbers without repeats.
Create a 256-bit (32-byte) memory block initialized with zeros, let's call it b
Your looping variable will be n, the number of numbers yet to be generated
Loop from n = 256 to n = 1
Generate a random number r in the range [0, n)
Find the r-th zero bit in your memory block b, let's call it p
Put p in your list of results, an array called q
Flip the p-th bit in memory block b to 1
After the n = 1 pass, you are done generating your list of numbers
Here's a short example of what I am talking about, using n = 4 initially:
**Setup**
b = 0000
q = []
**First loop pass, where n = 4**
r = 2
p = 2
b = 0010
q = [2]
**Second loop pass, where n = 3**
r = 2
p = 3
b = 0011
q = [2, 3]
**Third loop pass, where n = 2**
r = 0
p = 0
b = 1011
q = [2, 3, 0]
** Fourth and final loop pass, where n = 1**
r = 0
p = 1
b = 1111
q = [2, 3, 0, 1]
Please check answers at
Generate sequence of integers in random order without constructing the whole list upfront
and also my answer lies there as
very simple random is 1+((power(r,x)-1) mod p) will be from 1 to p for values of x from 1 to p and will be random where r and p are prime numbers and r <> p.
I asked a similar question before but mine was for the whole range of a int see Looking for a Hash Function /Ordered Int/ to /Shuffled Int/
static std::unordered_set<long> s;
long l = 0;
for(; !l && (s.end() != s.find(l)); l = generator());
v.insert(l);
generator() being your random number generator. You roll numbers as long as the entry is not in your set, then you add what you find in it. You get the idea.
I did it with long for the example, but you should make that a template if your PRNG is templatized.
Alternative is to use a cryptographically secure PRNG that will have a very low probability to generate twice the same number.
If you don't mean poor statisticall properties of generated sequence, there is one method:
Let's say you want to generate N numbers, each of 1024 bits each. You can sacrifice some bits of generated number to be "counter".
So you generate each random number, but into some bits you choosen you put binary encoded counter (from variable, you increase each time next random number is generated).
You can split that number into single bits and put it in some of less significant bits of generated number.
That way you are sure you get unique number each time.
I mean for example each generated number looks like that:
xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxyyxxxxyxyyyyxxyxx
where x is take directly from generator, and ys are taken from counter variable.
Mersenne twister
Description of which can be found here on Wikipedia: Mersenne twister
Look at the bottom of the page for implementations in various languages.
The problem is to select a "random" sequence of N unique numbers from the range 1..M where there is no constraint on the relationship between N and M (M could be much bigger, about the same, or even smaller than N; they may not be relatively prime).
Expanding on the linear feedback shift register answer: for a given M, construct a maximal LFSR for the smallest power of two that is larger than M. Then just grab your numbers from the LFSR throwing out numbers larger than M. On average, you will throw out at most half the generated numbers (since by construction more than half the range of the LFSR is less than M), so the expected running time of getting a number is O(1). You are not storing previously generated numbers so space consumption is O(1) too. If you cycle before getting N numbers then M less than N (or the LFSR is constructed incorrectly).
You can find the parameters for maximum length LFSRs up to 168 bits here (from wikipedia): http://www.xilinx.com/support/documentation/application_notes/xapp052.pdf
Here's some java code:
/**
* Generate a sequence of unique "random" numbers in [0,M)
* #author dkoes
*
*/
public class UniqueRandom
{
long lfsr;
long mask;
long max;
private static long seed = 1;
//indexed by number of bits
private static int [][] taps = {
null, // 0
null, // 1
null, // 2
{3,2}, //3
{4,3},
{5,3},
{6,5},
{7,6},
{8,6,5,4},
{9,5},
{10,7},
{11,9},
{12,6,4,1},
{13,4,3,1},
{14,5,3,1},
{15,14},
{16,15,13,4},
{17,14},
{18,11},
{19,6,2,1},
{20,17},
{21,19},
{22,21},
{23,18},
{24,23,22,17},
{25,22},
{26,6,2,1},
{27,5,2,1},
{28,25},
{29,27},
{30,6,4,1},
{31,28},
{32,22,2,1},
{33,20},
{34,27,2,1},
{35,33},
{36,25},
{37,5,4,3,2,1},
{38,6,5,1},
{39,35},
{40,38,21,19},
{41,38},
{42,41,20,19},
{43,42,38,37},
{44,43,18,17},
{45,44,42,41},
{46,45,26,25},
{47,42},
{48,47,21,20},
{49,40},
{50,49,24,23},
{51,50,36,35},
{52,49},
{53,52,38,37},
{54,53,18,17},
{55,31},
{56,55,35,34},
{57,50},
{58,39},
{59,58,38,37},
{60,59},
{61,60,46,45},
{62,61,6,5},
{63,62},
};
//m is upperbound; things break if it isn't positive
UniqueRandom(long m)
{
max = m;
lfsr = seed; //could easily pass a starting point instead
//figure out number of bits
int bits = 0;
long b = m;
while((b >>>= 1) != 0)
{
bits++;
}
bits++;
if(bits < 3)
bits = 3;
mask = 0;
for(int i = 0; i < taps[bits].length; i++)
{
mask |= (1L << (taps[bits][i]-1));
}
}
//return -1 if we've cycled
long next()
{
long ret = -1;
if(lfsr == 0)
return -1;
do {
ret = lfsr;
//update lfsr - from wikipedia
long lsb = lfsr & 1;
lfsr >>>= 1;
if(lsb == 1)
lfsr ^= mask;
if(lfsr == seed)
lfsr = 0; //cycled, stick
ret--; //zero is stuck state, never generated so sub 1 to get it
} while(ret >= max);
return ret;
}
}
Here is a way to random without repeating results. It also works for strings. Its in C# but the logig should work in many places. Put the random results in a list and check if the new random element is in that list. If not than you have a new random element. If it is in that list, repeat the random until you get an element that is not in that list.
List<string> Erledigte = new List<string>();
private void Form1_Load(object sender, EventArgs e)
{
label1.Text = "";
listBox1.Items.Add("a");
listBox1.Items.Add("b");
listBox1.Items.Add("c");
listBox1.Items.Add("d");
listBox1.Items.Add("e");
}
private void button1_Click(object sender, EventArgs e)
{
Random rand = new Random();
int index=rand.Next(0, listBox1.Items.Count);
string rndString = listBox1.Items[index].ToString();
if (listBox1.Items.Count <= Erledigte.Count)
{
return;
}
else
{
if (Erledigte.Contains(rndString))
{
//MessageBox.Show("vorhanden");
while (Erledigte.Contains(rndString))
{
index = rand.Next(0, listBox1.Items.Count);
rndString = listBox1.Items[index].ToString();
}
}
Erledigte.Add(rndString);
label1.Text += rndString;
}
}
For a sequence to be random there should not be any auto correlation. The restriction that the numbers should not repeat means the next number should depend on all the previous numbers which means it is not random anymore....
If you can generate 'small' random numbers, you can generate 'large' random numbers by integrating them: add a small random increment to each 'previous'.
const size_t amount = 100; // a limited amount of random numbers
vector<long int> numbers;
numbers.reserve( amount );
const short int spread = 250; // about 250 between each random number
numbers.push_back( myrandom( spread ) );
for( int n = 0; n != amount; ++n ) {
const short int increment = myrandom( spread );
numbers.push_back( numbers.back() + increment );
}
myshuffle( numbers );
The myrandom and myshuffle functions I hereby generously delegate to others :)
to have non repeated random numbers and to avoid waistingtime with checking for doubles numbers and get new numbers over and over use the below method which will assure the minimum usage of Rand:
for example if you want to get 100 non repeated random number:
1. fill an array with numbers from 1 to 100
2. get a random number using Rand function in the range of (1-100)
3. use the genarted random number as an Index to get th value from the array (Numbers[IndexGeneratedFromRandFunction]
4. shift the number in the array after that Index to the left
5. repeat from step 2 but now the the rang should be (1-99) and go on
now we have a array with different numbers!
int main() {
int b[(the number
if them)];
for (int i = 0; i < (the number of them); i++) {
int a = rand() % (the number of them + 1) + 1;
int j = 0;
while (j < i) {
if (a == b[j]) {
a = rand() % (the number of them + 1) + 1;
j = -1;
}
j++;
}
b[i] = a;
}
}