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I would like to compute

S = n  + m - \sum_{k=1}^{n} k^{k-1} \binom{n}{k} \frac{(n-k)^{n+m-k}}{n^{n+m-1}}

for nm with both values being integers ranging up to 1000. The end result is a number not much bigger than n but the intermediate values are much too large for python to cope with. How can you solve this?

I define the function as follows.

from scipy.misc import comb
def S(n,m):
    return n+m-sum([k**(k - 1)*comb(n, k)*(n - k)**(n + m - k)/n**(n + m - 1) for k in xrange(1,n+1)])

The error I get for n=m=100, for example, is

RuntimeWarning: overflow encountered in multiply
  return n+m-sum([k**(k - 1)*comb(n, k)*(n - k)**(n + m - k)/n**(n + m - 1) for k in xrange(1,n+1)])
OverflowError: long int too large to convert to float
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Sorry, LaTeX doesn't work on SO (although I wish it did. I really, really do.) Want to reformat that question so it reads a little better? – Makoto Apr 16 '13 at 18:52
Too large integers for Python to cope with? Are you sure? – Lev Levitsky Apr 16 '13 at 18:53
Python can handle integers of arbitrary size. Do you mean numpy? – Pavel Anossov Apr 16 '13 at 18:53
What do you mean by "values are much too large for python to cope with"? How do you compute the sum? What's the result? What result did you expect? – jorgeca Apr 16 '13 at 18:58
For which values of n and m? How is comb defined? – jorgeca Apr 16 '13 at 19:00
up vote 4 down vote accepted

Seems like the problem is in scipy's comb definition. When I supply a homemade version, it works fine:

import math

def choose(n,k):
    return math.factorial(n) / (math.factorial(k)*math.factorial(n-k))

comb = choose

def S(n,m):
    return n+m-sum([k**(k - 1)*comb(n, k)*(n - k)**(n + m - k)/n**(n + m - 1) for k in xrange(1,n+1)])

print S(1000,1000)

result (in about 1.5 seconds):


As an alternative to writing your own comb, try passing True in for the optional exact argument to comb. Seems like you'll get a float back otherwise, which may mess things up.

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Not only does adding exact=True fix the problem, it also speeds it up hugely! I can then add from future import division and it still works. That looks a bit like a bug in comb to me. – Anush Apr 16 '13 at 19:09
I will do but.. I think it's polite to leave a question open for at least an hour for those who don't type as quickly :) – Anush Apr 16 '13 at 19:29

scipy.misc.comb returns an ndarray of one floating point number in this case. The rest of your computations are done with integers (eventually long integers in Python < 3). When multiplying a floating point number by an int, Python tries to convert it to a float, but 99**199 ~ 1e397 doesn't fit in a Python float (64 bits), so it raises an error.

A solution is to pass exact=True as an argument to comb. By the way, you can remove [ and ] inside sum: this avoids the creation of the inner list, so it should be faster and more memory efficient (it's similar to the difference between range and xrange). And if you ever happen to be adding up floating point numbers (not needed here), it's much better to use math.fsum (accurate floating point sum of values) than sum.

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