# Algorithm to find least sum of squares of differences

Basically this algorithm I'm writing takes as input a List L and wants to find a number x such that all items in L, i, minus x squared and summed are minimized. Find minimum x for the sum of `abs(L[i]-x)**2`. So far my algorithm is doing what it's supposed to, just not in the cases of floating. I'm not sure how to implement floating. For example `[2, 2, 3, 4]` ideally would yield the result `2.75`, but my algorithm isn't currently capable of yielding floating integers.

`````` def minimize_square(L):
sumsqdiff = 0
sumsqdiffs = {}
for j in range(min(L), max(L)):
for i in range(len(L)-1):
sumsqdiff += abs(L[i]-j)**2
sumsqdiffs[j]=sumsqdiff
sumsqdiff = 0
return min(sumsqdiffs, key=sumsqdiffs.get)
``````
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You can create a float from a number by using `float(number)`. Any further operation involving `number` will then give a floating-point result. –  heltonbiker Dec 5 '12 at 16:03
Are you more interested in finding the value, or understanding and improving your algorithm as a programming exercise? –  heltonbiker Dec 5 '12 at 16:17

It is easy to prove [*] that the number that minimizes the sum of squared differences is the arithmetic mean of `L`. This gives the following simple solution:

``````In [26]: L = [2, 2, 3, 4]

In [27]: sum(L) / float(len(L))
Out[27]: 2.75
``````

or, using NumPy:

``````In [28]: numpy.mean(L)
Out[28]: 2.75
``````

[*] Here is an outline of the proof:

We need to find `x` that minimizes `f(x) = sum((x - L[i])**2)` where the sum is taken over `i=0..n-1`.

Take the derivative of `f(x)` and set it to zero:

``````2*sum(x - L[i]) = 0
``````

Using simple algebra, the above can be transformed into

``````x = sum(L[i]) / n
``````

which is none other than the arithmetic mean of `L`. QED.

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+1. Can you add a short proof or link to one? I'm very interested. Thanks! –  rubik Dec 5 '12 at 16:19
I'm not sure if that's necessarily true though. Here are some tests with random numbers to show: >>> L = [random.randrange(100) for i in range(20)] >>> avgL = sum(L)/len(L) >>> avgL 58 >>> minimize_square(L) 59 >>> L = [random.randrange(100) for i in range(20)] >>> avgL = sum(L)/len(L) >>> avgL 51 >>> minimize_square(L) 49 >>> L = [random.randrange(100) for i in range(20)] >>> avgL = sum(L)/len(L) >>> avgL 53 >>> minimize_square(L) 55 >>> –  madman2890 Dec 5 '12 at 16:27
@rubik: I've added an outline of the proof. –  NPE Dec 5 '12 at 16:28
@madman2890, your >>> L = [random.randrange(100) for i in range(20)] >>> avgL = sum(L)/len(L) >>> avgL 51 >>> minimize_square(L) 49 computation is defective because you didn't float(len(L)). Ie you computed with avgL being integer truncation of average, but not equal to the average –  jwpat7 Dec 5 '12 at 16:35
Thanks guys. I appreciate the feedback it helps when you're just learning this stuff, especially from @NPE –  madman2890 Dec 5 '12 at 16:42

I am not 100% sure this is the most efficient way to do this but what you could do is mantain the same algorithm that you have and modify the return statement.

``````min_int = min(sumsqdiffs, key=sumsqdiffs.get)
return bisection(L,min_int-1,min_int+1)
``````

where `bisection` implement the following method: Bisection Method

This works iff there is a single minimum for the function in the analyzed interval.

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Did not think that it was a sum of squared differences -> look at @NPE answer. –  igon Dec 5 '12 at 16:13