# Algorithm to return all combinations of k elements from n

I want to write a function that takes an array of letters as an argument and a number of those letters to select.

Say you provide an array of 8 letters and want to select 3 letters from that. Then you should get:

``````8! / ((8 - 3)! * 3!) = 56
``````

Arrays (or words) in return consisting of 3 letters each.

-

A concise Javascript solution:

``````Array.prototype.combine=function combine(k){
var toCombine=this;
var last;
function combi(n,comb){
var combs=[];
for ( var x=0,y=comb.length;x<y;x++){
for ( var l=0,m=toCombine.length;l<m;l++){
combs.push(comb[x]+toCombine[l]);
}
}
if (n<k-1){
n++;
combi(n,combs);
} else{last=combs;}
}
combi(1,toCombine);
return last;
}
// Example:
// var toCombine=['a','b','c'];
// var results=toCombine.combine(4);
``````
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Short php algorithm to return all combinations of k elements from n (binomial coefficent) based on java solution:

``````\$array = array(1,2,3,4,5);

\$array_result = NULL;

\$array_general = NULL;

function combinations(\$array, \$len, \$start_position, \$result_array, \$result_len, &\$general_array)
{
if(\$len == 0)
{
\$general_array[] = \$result_array;
return;
}

for (\$i = \$start_position; \$i <= count(\$array) - \$len; \$i++)
{
\$result_array[\$result_len - \$len] = \$array[\$i];
combinations(\$array, \$len-1, \$i+1, \$result_array, \$result_len, \$general_array);
}
}

combinations(\$array, 3, 0, \$array_result, 3, \$array_general);

echo "<pre>";
print_r(\$array_general);
echo "</pre>";
``````
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In Python like Andrea Ambu, but not hardcoded for choosing three.

``````def combinations(list, k):
"""Choose combinations of list, choosing k elements(no repeats)"""
if len(list) < k:
return []
else:
seq = [i for i in range(k)]
while seq:
print [list[index] for index in seq]
seq = get_next_combination(len(list), k, seq)

def get_next_combination(num_elements, k, seq):
index_to_move = find_index_to_move(num_elements, seq)
if index_to_move == None:
return None
else:
seq[index_to_move] += 1

#for every element past this sequence, move it down
for i, elem in enumerate(seq[(index_to_move+1):]):
seq[i + 1 + index_to_move] = seq[index_to_move] + i + 1

return seq

def find_index_to_move(num_elements, seq):
"""Tells which index should be moved"""
for rev_index, elem in enumerate(reversed(seq)):
if elem < (num_elements - rev_index - 1):
return len(seq) - rev_index - 1
return None
``````
-

A Lisp macro generates the code for all values r (taken-at-a-time)

``````(defmacro txaat (some-list taken-at-a-time)
(let* ((vars (reverse (truncate-list '(a b c d e f g h i j) taken-at-a-time))))
`(
,@(loop for i below taken-at-a-time
for j in vars
with nested = nil
finally (return nested)
do
(setf
nested
`(loop for ,j from
,(if (< i (1- (length vars)))
`(1+ ,(nth (1+ i) vars))
0)
below (- (length ,some-list) ,i)
,@(if (equal i 0)
`(collect
(list
,@(loop for k from (1- taken-at-a-time) downto 0
append `((nth ,(nth k vars) ,some-list)))))
`(append ,nested))))))))
``````

So,

``````CL-USER> (macroexpand-1 '(txaat '(a b c d) 1))
(LOOP FOR A FROM 0 TO (- (LENGTH '(A B C D)) 1)
COLLECT (LIST (NTH A '(A B C D))))
T
CL-USER> (macroexpand-1 '(txaat '(a b c d) 2))
(LOOP FOR A FROM 0 TO (- (LENGTH '(A B C D)) 2)
APPEND (LOOP FOR B FROM (1+ A) TO (- (LENGTH '(A B C D)) 1)
COLLECT (LIST (NTH A '(A B C D)) (NTH B '(A B C D)))))
T
CL-USER> (macroexpand-1 '(txaat '(a b c d) 3))
(LOOP FOR A FROM 0 TO (- (LENGTH '(A B C D)) 3)
APPEND (LOOP FOR B FROM (1+ A) TO (- (LENGTH '(A B C D)) 2)
APPEND (LOOP FOR C FROM (1+ B) TO (- (LENGTH '(A B C D)) 1)
COLLECT (LIST (NTH A '(A B C D))
(NTH B '(A B C D))
(NTH C '(A B C D))))))
T

CL-USER>
``````

And,

``````CL-USER> (txaat '(a b c d) 1)
((A) (B) (C) (D))
CL-USER> (txaat '(a b c d) 2)
((A B) (A C) (A D) (B C) (B D) (C D))
CL-USER> (txaat '(a b c d) 3)
((A B C) (A B D) (A C D) (B C D))
CL-USER> (txaat '(a b c d) 4)
((A B C D))
CL-USER> (txaat '(a b c d) 5)
NIL
CL-USER> (txaat '(a b c d) 0)
NIL
CL-USER>
``````
-

In Python, taking advantage of recursion and the fact that everything is done by reference. This will take a lot of memory for very large sets, but has the advantage that the initial set can be a complex object. It will find only unique combinations.

``````import copy

def find_combinations( length, set, combinations = None, candidate = None ):
# recursive function to calculate all unique combinations of unique values
# from [set], given combinations of [length].  The result is populated
# into the 'combinations' list.
#
if combinations == None:
combinations = []
if candidate == None:
candidate = []

for item in set:
if item in candidate:
# this item already appears in the current combination somewhere.
# skip it
continue

attempt = copy.deepcopy(candidate)
attempt.append(item)
# sorting the subset is what gives us completely unique combinations,
# so that [1, 2, 3] and [1, 3, 2] will be treated as equals
attempt.sort()

if len(attempt) < length:
# the current attempt at finding a new combination is still too
# short, so add another item to the end of the set
# yay recursion!
find_combinations( length, set, combinations, attempt )
else:
# the current combination attempt is the right length.  If it
# already appears in the list of found combinations then we'll
# skip it.
if attempt in combinations:
continue
else:
# otherwise, we append it to the list of found combinations
# and move on.
combinations.append(attempt)
continue
return len(combinations)
``````

You use it this way. Passing 'result' is optional, so you could just use it to get the number of possible combinations... although that would be really inefficient (it's better done by calculation).

``````size = 3
set = [1, 2, 3, 4, 5]
result = []

num = find_combinations( size, set, result )
print "size %d results in %d sets" % (size, num)
print "result: %s" % (result,)
``````

You should get the following output from that test data:

``````size 3 results in 10 sets
result: [[1, 2, 3], [1, 2, 4], [1, 2, 5], [1, 3, 4], [1, 3, 5], [1, 4, 5], [2, 3, 4], [2, 3, 5], [2, 4, 5], [3, 4, 5]]
``````

And it will work just as well if your set looks like this:

``````set = [
[ 'vanilla', 'cupcake' ],
[ 'chocolate', 'pudding' ],
[ 'vanilla', 'pudding' ],
]
``````
-

In VB.Net, this algorithm collects all combinations of n numbers from a set of numbers (PoolArray). e.g. all combinations of 5 picks from "8,10,20,33,41,44,47".

``````Sub CreateAllCombinationsOfPicksFromPool(ByVal PicksArray() As UInteger, ByVal PicksIndex As UInteger, ByVal PoolArray() As UInteger, ByVal PoolIndex As UInteger)
If PicksIndex < PicksArray.Length Then
For i As Integer = PoolIndex To PoolArray.Length - PicksArray.Length + PicksIndex
PicksArray(PicksIndex) = PoolArray(i)
CreateAllCombinationsOfPicksFromPool(PicksArray, PicksIndex + 1, PoolArray, i + 1)
Next
Else
' completed combination. build your collections using PicksArray.
End If
End Sub

Dim PoolArray() As UInteger = Array.ConvertAll("8,10,20,33,41,44,47".Split(","), Function(u) UInteger.Parse(u))
Dim nPicks as UInteger = 5
Dim Picks(nPicks - 1) As UInteger
CreateAllCombinationsOfPicksFromPool(Picks, 0, PoolArray, 0)
``````
-

My implementation in c/c++

here my implementation in c++, it write all combinations to specified files, but behaviour can be changed, i made in to generate various dictionaries, it accept min and max length and character range, currently only ansi supported, it enough for my needs

-

``````#include<iostream>
#include<string>
using namespace std;

void combination(string a,string dest){
int l = dest.length();
if(a.empty() && l  == 3 ){
cout<<dest<<endl;}
else{
if(!a.empty() && dest.length() < 3 ){
combination(a.substr(1,a.length()),dest+a[0]);}
if(!a.empty() && dest.length() <= 3 ){
combination(a.substr(1,a.length()),dest);}
}

}

int main(){
string demo("abcd");
combination(demo,"");
return 0;
}
``````
-

Short fast C implementation

``````#include <stdio.h>

void main(int argc, char *argv[]) {
const int n = 6; /* The size of the set; for {1, 2, 3, 4} it's 4 */
const int p = 4; /* The size of the subsets; for {1, 2}, {1, 3}, ... it's 2 */
int comb[40] = {0}; /* comb[i] is the index of the i-th element in the combination */

int i = 0;
for (int j = 0; j <= n; j++) comb[j] = 0;
while (i >= 0) {
if (comb[i] < n + i - p + 1) {
comb[i]++;
if (i == p - 1) { for (int j = 0; j < p; j++) printf("%d ", comb[j]); printf("\n"); }
else            { comb[++i] = comb[i - 1]; }
} else i--; }
}
``````

To see how fast it is, use this code and test it

``````#include <time.h>
#include <stdio.h>

void main(int argc, char *argv[]) {
const int n = 32; /* The size of the set; for {1, 2, 3, 4} it's 4 */
const int p = 16; /* The size of the subsets; for {1, 2}, {1, 3}, ... it's 2 */
int comb[40] = {0}; /* comb[i] is the index of the i-th element in the combination */

int c = 0; int i = 0;
for (int j = 0; j <= n; j++) comb[j] = 0;
while (i >= 0) {
if (comb[i] < n + i - p + 1) {
comb[i]++;
/* if (i == p - 1) { for (int j = 0; j < p; j++) printf("%d ", comb[j]); printf("\n"); } */
if (i == p - 1) c++;
else            { comb[++i] = comb[i - 1]; }
} else i--; }
printf("%d!%d == %d combination(s) in %15.3f second(s)\n ", p, n, c, clock()/1000.0);
}
``````

test with cmd.exe (windows):

``````Microsoft Windows XP [Version 5.1.2600]

c:\Program Files\lcc\projects>combination
16!32 == 601080390 combination(s) in          5.781 second(s)

c:\Program Files\lcc\projects>
``````

Have a nice day.

-

yet another recursive solution (you should be able to port this to use letters instead of numbers) using a stack, a bit shorter than most though:

``````stack = []
def choose(n,x):
r(0,0,n+1,x)

def r(p, c, n,x):
if x-c == 0:
print stack
return

for i in range(p, n-(x-1)+c):
stack.append(i)
r(i+1,c+1,n,x)
stack.pop()

#4 choose 3 or I want all 3 combinations of numbers starting with 0 to 4
choose(4,3)

[0, 1, 2]
[0, 1, 3]
[0, 1, 4]
[0, 2, 3]
[0, 2, 4]
[0, 3, 4]
[1, 2, 3]
[1, 2, 4]
[1, 3, 4]
[2, 3, 4]
``````
-

Here's a coffeescript implementation

``````combinations: (list, n) ->
permuations = Math.pow(2, list.length) - 1
out = []
combinations = []

while permuations
out = []

for i in [0..list.length]
y = ( 1 << i )
if( y & permuations and (y isnt permuations))
out.push(list[i])

if out.length <= n and out.length > 0
combinations.push(out)

permuations--

return combinations
``````
-

Here is my Scala solution:

``````def combinations[A](s: List[A], k: Int): List[List[A]] =
if (k > s.length) Nil
else if (k == 1) s.map(List(_))
else combinations(s.tail, k - 1).map(s.head :: _) ::: combinations(s.tail, k)
``````
-

Clojure version:

``````
(defn comb [k l]
(if (= 1 k) (map vector l)
(apply concat
(map-indexed
#(map (fn [x] (conj x %2))
(comb (dec k) (drop (inc %1) l)))
l))))
``````
-

this is my contribution in javascript (no recursion)

``````set = ["q0", "q1", "q2", "q3"]
collector = []

function comb(num) {
results = []
one_comb = []
for (i = set.length - 1; i >= 0; --i) {
tmp = Math.pow(2, i)
quotient = parseInt(num / tmp)
results.push(quotient)
num = num % tmp
}
k = 0
for (i = 0; i < results.length; ++i)
if (results[i]) {
++k
one_comb.push(set[i])
}
if (collector[k] == undefined)
collector[k] = []
collector[k].push(one_comb)
}

sum = 0
for (i = 0; i < set.length; ++i)
sum += Math.pow(2, i)
for (ii = sum; ii > 0; --ii)
comb(ii)
cnt = 0
for (i = 1; i < collector.length; ++i) {
n = 0
for (j = 0; j < collector[i].length; ++j)
document.write(++cnt, " - " + (++n) + " - ", collector[i][j], "<br>")
document.write("<hr>")
}
``````
-

All said and and done here comes the O'caml code for that. Algorithm is evident from the code..

``````let combi n lst =
let rec comb l c =
if( List.length c = n) then [c] else
match l with
[] -> []
| (h::t) -> (combi t (h::c))@(combi t c)
in
combi lst []
;;
``````
-

Perhaps I've missed the point (that you need the algorithm and not the ready made solution), but it seems that scala does it out of the box (now):

``````def combis(str:String, k:Int):Array[String] = {
str.combinations(k).toArray
}
``````

Using the method like this: println(combis("abcd",2).toList) Will produce: List(ab, ac, ad, bc, bd, cd)

-

Short fast C# implementation

``````public static IEnumerable<IEnumerable<T>> Combinations<T>(IEnumerable<T> elements, int k)
{
return Combinations(elements.Count(), k).Select(p => p.Select(q => elements.ElementAt(q)));
}

public static List<int[]> Combinations(int setLenght, int subSetLenght) //5, 3
{
var result = new List<int[]>();

var lastIndex = subSetLenght - 1;
var dif = setLenght - subSetLenght;
var prevSubSet = new int[subSetLenght];
var lastSubSet = new int[subSetLenght];
for (int i = 0; i < subSetLenght; i++)
{
prevSubSet[i] = i;
lastSubSet[i] = i + dif;
}

while(true)
{
var n = new int[subSetLenght];
for (int i = 0; i < subSetLenght; i++)
n[i] = prevSubSet[i];

if (prevSubSet[0] >= lastSubSet[0])
break;

//start at index 1 because index 0 is checked and breaking in the current loop
int j = 1;
for (; j < subSetLenght; j++)
{
if (prevSubSet[j] >= lastSubSet[j])
{
prevSubSet[j - 1]++;

for (int p = j; p < subSetLenght; p++)
prevSubSet[p] = prevSubSet[p - 1] + 1;

break;
}
}

if (j > lastIndex)
prevSubSet[lastIndex]++;
}

return result;
}
``````
-

Here's a C++ solution i came up with using recursion and bit-shifting. It may work in C as well.

``````void r_nCr(unsigned int startNum, unsigned int bitVal, unsigned int testNum) // Should be called with arguments (2^r)-1, 2^(r-1), 2^(n-1)
{
unsigned int n = (startNum - bitVal) << 1;
n += bitVal ? 1 : 0;

for (unsigned int i = log2(testNum) + 1; i > 0; i--) // Prints combination as a series of 1s and 0s
cout << (n >> (i - 1) & 1);
cout << endl;

if (!(n & testNum) && n != startNum)
r_nCr(n, bitVal, testNum);

if (bitVal && bitVal < testNum)
r_nCr(startNum, bitVal >> 1, testNum);
}
``````

You can find an explanation of how this works here.

-

C# simple algorithm. (I'm posting it since I've tried to use the one you guys uploaded, but for some reason I couldn't compile it - extending a class? so I wrote my own one just in case someone else is facing the same problem I did). I'm not much into c# more than basic programming by the way, but this one works fine.

``````public static List<List<int>> GetSubsetsOfSizeK(List<int> lInputSet, int k)
{
List<List<int>> lSubsets = new List<List<int>>();
GetSubsetsOfSizeK_rec(lInputSet, k, 0, new List<int>(), lSubsets);
return lSubsets;
}

public static void GetSubsetsOfSizeK_rec(List<int> lInputSet, int k, int i, List<int> lCurrSet, List<List<int>> lSubsets)
{
if (lCurrSet.Count == k)
{
return;
}

if (i >= lInputSet.Count)
return;

List<int> lWith = new List<int>(lCurrSet);
List<int> lWithout = new List<int>(lCurrSet);

GetSubsetsOfSizeK_rec(lInputSet, k, i, lWith, lSubsets);
GetSubsetsOfSizeK_rec(lInputSet, k, i, lWithout, lSubsets);
}``````

USAGE: GetSubsetsOfSizeK(set of type List, integer k)

You can modify it to iterate over whatever you are working with.

Good luck!

-

Here is an algorithm i came up with for solving this problem. Its written in c++, but can be adapted to pretty much any language that supports bitwise operations.

``````void r_nCr(const unsigned int &startNum, const unsigned int &bitVal, const unsigned int &testNum) // Should be called with arguments (2^r)-1, 2^(r-1), 2^(n-1)
{
unsigned int n = (startNum - bitVal) << 1;
n += bitVal ? 1 : 0;

for (unsigned int i = log2(testNum) + 1; i > 0; i--) // Prints combination as a series of 1s and 0s
cout << (n >> (i - 1) & 1);
cout << endl;

if (!(n & testNum) && n != startNum)
r_nCr(n, bitVal, testNum);

if (bitVal && bitVal < testNum)
r_nCr(startNum, bitVal >> 1, testNum);
}
``````

You can see an explanation of how it works here.

-

short python code, yielding index positions

``````def yield_combos(n,k):
# n is set size, k is combo size

i = 0
a = [0 for i in range(k)]

while i > -1:
for j in range(i+1, k):
a[j] = a[j-1]+1
i=j
yield a
while a[i] == i + n - k:
i -= 1
a[i] += 1
``````
-