# Sum-of-Product of subsets

Is there a name for this operation? And: is there a closed-form expression?

• For a given set of n elements, and value k between 1 and n,
• Take all subsets (combinations) of k items
• Find the product of each subset
• Find the sum of all those products

I can express this in Python, and do the calculation pretty easily:

``````from operator import mul
from itertools import combinations
from functools import reduce
def sum_of_product_of_subsets(list1, k):
val = 0
for subset in combinations(list1, k):
val += reduce(mul, subset)
return val
``````

I'm just looking for the closed form expression, so as to avoid the loop in case the set size gets big.

Note this is NOT the same as this question: Sum of the product over all combinations with one element from each group -- that question is about the sum-of-products of a Cartesian product. I'm looking for the sum-of-products of the set of combinations of size k; I don't think they are the same.

To be clear, for set(a, b, c, d), then:

``````k = 4 --> a*b*c*d
k = 3 --> b*c*d + a*c*d + a*b*d + a*b*c
k = 2 --> a*b + a*c + a*d + b*c + b*d + c*d
k = 1 --> a + b + c + d
``````

Just looking for the expression; no need to supply the Python code specifically. (Any language would be illustrative, if you'd like to supply an example implementation.)

-
These are called elementary symmetric polynomials. –  KennyTM Apr 11 '12 at 12:55

These are elementary symmetric polynomials. You can write them using summation signs as in Wikipedia. You can also use Vieta's formulas to get all of them at once as coefficients of a polynomial (up to signs)

``````(x-a_1)(x-a_2)...(x-a_k) =
x^k -
(a_1 + ... + a_k) x^(k-1) +
(a_1 a_2 + a_1 a_3 + ... + a_(k-1) a_k)) x^(k-2) +
... +
(-1)^k a_1 ... a_k
``````

By expanding (x-a_1)(x-a_2)...(x-a_k) you get a polynomial time algorithm to compute all those numbers (your original implementation runs in exponential time).

Edit: Python implementation:

``````from itertools import izip, chain

l = [2,3,4]

x = [1]
for i in l:
x = [a + b*i for a,b in izip(chain([0],x), chain(x,[0]))]
print x
``````

That gives you [24, 26, 9, 1], as 2*3*4=24, 2*3+2*4+3*4=26, 2+3+4=9. That last 1 is the empty product, which corresponds to k=0 in your implementation.

This should be O(N2). Using polynomial FFT you could do O(N log2 N), but I am too lazy to code that.

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Hmmm. The pointer to "elementary symmetric polynomials" and "Vieta's formula" is appreciated. But it seems to me you are proposing "calculate the coefficients of the expansion of (x-a_1)(x-a_2)...(x-a_k) to save time"... but those are basically the ANSWER to my question: "a*b*c*d" through "a+b+c+d". How -- exactly -- do I calculate them "efficiently"? –  Dan H Apr 11 '12 at 13:19
Dan H: Coding naive polynomial multiplication is enough to get O(N^2), I added it in the answer. If you want better asymptotics, use O(N log N) fast polynomial multiplication (check Cormen algorithms book for details). –  sdcvvc Apr 11 '12 at 13:30
@sdcwc: OK, great: the Python implementation DOES explain/illuminate nicely. And in fact, in my current application, I AM looking to do this for all values of k... so where I previously had n calls to my sum_of_product_of_subsets() function, I can now calc all in one pass. Cool. (And: I'll settle for O(N^2); my problem is not "big enough" to justify finding and coding the O(N log2 N) solution). –  Dan H Apr 11 '12 at 14:39