# Statistics: combinations in Python

I need to compute combinatorials (nCr) in Python but cannot find the function to do that in 'math', 'numyp' or 'stat' libraries. Something like a function of the type:

comb = calculate_combinations(n, r)

I need the number of possible combinations, not the actual combinations, so itertools.combinations does not interest me.

Finally, I want to avoid using factorials, as the numbers I'll be calculating the combinations for can get to big and the factorials are going to be monstruous.

This seems like a REALLY easy to answer question, however I am being drowned in questions about generating all the actual combinations, which is not what I want. :)

Many thanks

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See scipy.misc.comb. Unless exact answers are requested, it uses the gammaln function to obtain good precision without taking much time. In the exact case it returns a Python long, which might take long to compute.

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+1, I was looking for something like that but you beat me to finding it ;-) –  David Z Jun 11 '10 at 18:36
Many thanks. You save me some searching time :) –  Morlock Jun 11 '10 at 18:42

Why not write it yourself? It's a one-liner or such:

from operator import mul    # or mul=lambda x,y:x*y
from fractions import Fraction

def nCk(n,k):
return int( reduce(mul, (Fraction(n-i, i+1) for i in range(k)), 1) )

Test - printing Pascal's triangle:

>>> for n in range(17):
...     print ' '.join('%5d'%nCk(n,k) for k in range(n+1)).center(100)
...
1
1     1
1     2     1
1     3     3     1
1     4     6     4     1
1     5    10    10     5     1
1     6    15    20    15     6     1
1     7    21    35    35    21     7     1
1     8    28    56    70    56    28     8     1
1     9    36    84   126   126    84    36     9     1
1    10    45   120   210   252   210   120    45    10     1
1    11    55   165   330   462   462   330   165    55    11     1
1    12    66   220   495   792   924   792   495   220    66    12     1
1    13    78   286   715  1287  1716  1716  1287   715   286    78    13     1
1    14    91   364  1001  2002  3003  3432  3003  2002  1001   364    91    14     1
1    15   105   455  1365  3003  5005  6435  6435  5005  3003  1365   455   105    15     1
1    16   120   560  1820  4368  8008 11440 12870 11440  8008  4368  1820   560   120    16     1
>>>

PS. edited to replace int(round(reduce(mul, (float(n-i)/(i+1) for i in range(k)), 1))) with int(reduce(mul, (Fraction(n-i, i+1) for i in range(k)), 1)) so it won't err for big N/K

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+1 for suggesting to write something simple, for using reduce, and for the cool demo with pascal triangle –  jon_darkstar Nov 8 '10 at 15:32
bonus points if you substitute range( ..) with xrange( ... ) in python 2.x ;-) –  hochl Apr 17 '12 at 10:40
I think the poster was looking for a more efficient solution tailored to large inputs (so the use of a for loop, esp. with range, would't work) –  Philip Jun 12 '12 at 21:12
-1 because this answer is wrong: print factorial(54)/(factorial(54 - 27))/factorial(27) == nCk(54, 27) gives False. –  robert king Sep 15 '13 at 0:24
@NasBanov I changed my -1 to a +1 (Although I think the Fraction may be overkill lol). I just think it's good for people to know the limits of functions they are using. This answer ranks high on google search so a lot of new comers may use this code. –  robert king Sep 17 '13 at 1:32

If you want exact results and speed, try gmpy -- gmpy.comb should do exactly what you ask for, and it's pretty fast (of course, as gmpy's original author, I am biased;-).

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Indeed, gmpy2.comb() is 10 times faster than choose() from my answer for the code: for k, n in itertools.combinations(range(1000), 2): f(n,k) where f() is either gmpy2.comb() or choose() on Python 3. –  J.F. Sebastian Jun 12 '10 at 0:46

A quick search on google code gives (it uses formula from @Mark Byers's answer):

def choose(n, k):
"""
A fast way to calculate binomial coefficients by Andrew Dalke (contrib).
"""
if 0 <= k <= n:
ntok = 1
ktok = 1
for t in xrange(1, min(k, n - k) + 1):
ntok *= n
ktok *= t
n -= 1
return ntok // ktok
else:
return 0

choose() is 10 times faster (tested on all 0 <= (n,k) < 1e3 pairs) than scipy.misc.comb() if you need an exact answer.

def comb(N,k): # from scipy.comb(), but MODIFIED!
if (k > N) or (N < 0) or (k < 0):
return 0L
N,k = map(long,(N,k))
top = N
val = 1L
while (top > (N-k)):
val *= top
top -= 1
n = 1L
while (n < k+1L):
val /= n
n += 1
return val
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A nice solution that doesn't require any pkg –  Edward Newell May 19 '13 at 23:47

If you want an exact result, use sympy.binomial. It seems to be the fastest method, hands down.

x = 1000000
y = 234050

%timeit scipy.misc.comb(x, y, exact=True)
1 loops, best of 3: 1min 27s per loop

%timeit gmpy.comb(x, y)
1 loops, best of 3: 1.97 s per loop

%timeit int(sympy.binomial(x, y))
100000 loops, best of 3: 5.06 µs per loop
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Here's another alternative. This one was originally written in C++, so it can be backported to C++ for a finite-precision integer (e.g. __int64). The advantage is (1) it involves only integer operations, and (2) it avoids bloating the integer value by doing successive pairs of multiplication and division. I've tested the result with Nas Banov's Pascal triangle, it gets the correct answer:

def choose(n,r):
"""Computes n! / (r! (n-r)!) exactly. Returns a python long int."""
assert n >= 0
assert 0 <= r <= n

c = 1L
denom = 1
for (num,denom) in zip(xrange(n,n-r,-1), xrange(1,r+1,1)):
c = (c * num) // denom
return c

Rationale: To minimize the # of multiplications and divisions, we rewrite the expression as

n!      n(n-1)...(n-r+1)
--------- = ----------------
r!(n-r)!          r!

To avoid multiplication overflow as much as possible, we will evaluate in the following STRICT order, from left to right:

n / 1 * (n-1) / 2 * (n-2) / 3 * ... * (n-r+1) / r

We can show that integer arithmatic operated in this order is exact (i.e. no roundoff error).

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A literal translation of the mathematical definition is quite adequate in a lot of cases (remembering that Python will automatically use big number arithmetic):

from math import factorial

def calculate_combinations(n, r):
return factorial(n) // factorial(r) // factorial(n-r)

For some inputs I tested (e.g. n=1000 r=500) this was more than 10 times faster than the one liner reduce suggested in another (currently highest voted) answer. On the other hand, it is out-performed by the snippit provided by @J.F. Sebastian.

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If you want to rely on big number arithmetic, it would be better to use the // operator, which explicitly does integer (not floating point) division. Otherwise, this code not do the expected thing on Python3. –  Jim Garrison Nov 23 '13 at 18:32
Thanks @Jim - updated accordingly. –  Todd Owen Nov 26 '13 at 6:26

Using the supplied batteries...

import itertools
def choose(n,k):
return len(list(itertools.combinations(range(n),k)))

This is not efficient at all for large numbers, but it works fine for 99% of my typical usage, where n is rarely greater than 20.

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Using dynamic programming, the time complexity is Θ(n*m) and space complexity Θ(m):

def binomial(n, k):
""" (int, int) -> int

| c(n-1, k-1) + c(n-1, k), if 0 < k < n
c(n,k) = | 1                      , if n = k
| 1                      , if k = 0

Precondition: n > k

>>> binomial(9, 2)
36
"""

c = [0] * (n + 1)
c[0] = 1
for i in range(1, n + 1):
c[i] = 1
j = i - 1
while j > 0:
c[j] += c[j - 1]
j -= 1

return c[k]
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