# What is the proof of of (N–1) + (N–2) + (N–3) + … + 1= N*(N–1)/2 [closed]

I got this formula from a data structure book in the bubble sort algorithm.

I know that we are (n-1) * (n times), but why the division by 2?

Can anyone please explain this to me or give the detailed proof for it.

Thank you

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## closed as off topic by kennytm, Stephan202, Johannes Schaub - litb, Pascal Thivent, Bruno ReisMar 20 '10 at 17:17

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mathoverflow.net –  Pascal Thivent Mar 20 '10 at 17:11
...is for research-level math questions only. –  rjh Mar 20 '10 at 17:14
@PascalThivent: This question would be closed within seconds on mathoverflow. –  sepp2k Mar 20 '10 at 17:15
@Stephan, that's the formula if the `N` is added on the left side. If it's not, one `N` is missing, so `2N` should be subtracted in the numerator. –  Johannes Schaub - litb Mar 20 '10 at 17:16
Off-topic? - has algorithm analysis got nothing to do with programming? As Skystar says, the context is the analysis of an algorithm. –  Steve314 Mar 20 '10 at 17:27

See triangle numbers.

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Thanks I liked these techniques in explaining the proof of this formula especially technique number three, which can be found at betterexplained.com/articles/… –  skystar7 Mar 21 '10 at 11:36

``````    *
**
***
****
``````

representing 1+2+3+4 so far. Cut the triangle in half along one dimension...

``````     *
**
* **
** **
``````

Rotate the smaller part 180 degrees, and stick it on top of the bigger part...

``````    **
*

*
**
**
**
``````

Close the gap to get a rectangle.

At first sight this only works if the base of the rectangle has an even length - but if it has an odd length, you just cut the middle column in half - it still works with a half-unit-wide twice-as-tall (still integer area) strip on one side of your rectangle.

Whatever the base of the triangle, the width of your rectangle is `(base / 2)` and the height is `(base + 1)`, giving `((base + 1) * base) / 2`.

However, my `base` is your `n-1`, since the bubble sort compares a pair of items at a time, and therefore iterates over only (n-1) positions for the first loop.

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Try to make pairs of numbers from the set. The first + the last; the second + the one before last. It means n-1 + 1; n-2 + 2. The result is always n. And since you are adding two numbers together, there are only (n-1)/2 pairs that can be made from (n-1) numbers.

So it is like (N-1)/2 * N.

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I know that we are (n-1) * (n times), but why the division by 2?

It's only `(n - 1) * n` if you use a naive bubblesort. You can get a significant savings if you notice the following:

• After each compare-and-swap, the largest element you've encountered will be in the last spot you were at.

• After the first pass, the largest element will be in the last position; after the kth pass, the kth largest element will be in the kth last position.

Thus you don't have to sort the whole thing every time: you only need to sort n - 2 elements the second time through, n - 3 elements the third time, and so on. That means that the total number of compare/swaps you have to do is `(n - 1) + (n - 2) + ...`. This is an arithmetic series, and the equation for the total number of times is (n - 1)*n / 2.

Example: if the size of the list is N = 5, then you do 4 + 3 + 2 + 1 = 10 swaps -- and notice that 10 is the same as 4 * 5 / 2.

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But it is also written that n(n - 1)/2 or O(n^2) or n^2. So square of n i.e square of 5 is 25. But n(n-1)/2 is 10. So how is this possible? –  Harinder Mar 15 at 8:08
@Harinder: "or O(n^2) or n^2 ...". No, O(n^2) == n^2 is not correct. `n^2 + 1,000,000` is also `O(n^2)` but is clearly not equal to `n^2`. –  John Feminella Mar 15 at 17:57
This is what I don't understand. For example look at this sparknotes.com/cs/sorting/bubble/section1.rhtml . It also says in the end that average and worst case are n^2 –  Harinder Mar 15 at 18:07
And also is this correct n(n - 1)/2 or O(n^2)?? If so how did it become O(n^2) –  Harinder Mar 15 at 18:09
@Harinder: You should ask a separate SO question. Comments aren't really good for answering things at length. –  John Feminella Mar 15 at 19:46

`(N-1) + (N-2) +...+ 2 + 1` is a sum of N-1 items. Now reorder the items so, that after the first comes the last, then the second, then the second to last, i.e. `(N-1) + 1 + (N-2) + 2 +..`. The way the items are ordered now you can see that each of those pairs is equal to N (N-1+1 is N, N-2+2 is N). Since there are N-1 items, there are (N-1)/2 such pairs. So you're adding N (N-1)/2 times, so the total value is `N*(N-1)/2`.

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Sum of arithmetical progression

(A1+AN)/2*N = (1 + (N-1))/2*(N-1) = N*(N-1)/2

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Assume n=2. Then we have 2-1 = 1 on the left side and 2*1/2 = 1 on the right side.

Denote f(n) = (n-1)+(n-2)+(n-3)+...+1

Now assume we have tested up to n=k. Then we have to test for n=k+1.

on the left side we have k+(k-1)+(k-2)+...+1, so it's f(k)+k

On the right side we then have (k+1)*k/2 = (k^2+k)/2 = (k^2 +2k - k)/2 = k+(k-1)*k/2 = k*f(k)

So this have to hold for every k, and this concludes the proof.

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This is a pretty common proof. One way to prove this is to use mathematical induction. Here is a link: http://zimmer.csufresno.edu/~larryc/proofs/proofs.mathinduction.html

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Here's a proof by induction, considering `N` terms, but it's the same for `N - 1`:

For `N = 0` the formula is obviously true.

Suppose `1 + 2 + 3 + ... + N = N(N + 1) / 2` is true for some natural `N`.

We'll prove `1 + 2 + 3 + ... + N + (N + 1) = (N + 1)(N + 2) / 2` is also true by using our previous assumption:

`1 + 2 + 3 + ... + N + (N + 1) = (N(N + 1) / 2) + (N + 1) = (N + 1)((N / 2) + 1) = (N + 1)(N + 2) / 2`.

So the formula holds for all `N`.

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"Suppose P(N) is true for all natural N". That's not a correct proof by induction. You're aiming to prove P(N) => P(N+1), so you should assume P(N) is true for some N. If you assume it for all N, then you beg the question. –  Steve Jessop Mar 20 '10 at 17:35