# Calculating Time Complexity.. Need help coming up with the end result

Studying for a midterm tomorrow, and these time complexities are something I struggle with. I'm going over the simple examples in the book and for this example

Exchange Sort

``````void exchangesort (int n, keytype S[])
{
index i, j;
for(i=1; i<=n-1; i++)
for(j=i+1; j<=n; j++)
if(S[j] < S[i])
exchange S[i] and S[j];
}
``````

For the "Every-Case Time Complexity" of this Exchange sort, I understand the part that we pretty much analyze the `j` for-loop, because it has the basic operation (the exchange). And so if you list out the total number of passes, it's given by:

``````T(n) = (n-1) + (n-2) + (n-3) + ... + 1 = (n-1)n/2
``````

Now my question is... where does the 1 come from? I thought it was `n-1 + n-2 +... + n`.

Furthermore, what I really don't understand is how to come up with the `(n-1)n/2`.
That's obviously what I have to come up with in the midterm, and by looking at that, `(n-1)n/2` doesn't come intuitively... I understand how to come up with the `T(n) = (n-1) + (n-2)` etc., I think...

Can someone explain this to me in laymen's terms so I can come up with an answer like this for my midterm tomorrow?

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I don remember very well the details. But notice that in the worst case, each loop would do n passes. So, you have 2 nested loops. That is why you have the (n)(n). I hope that others stackoverflowers gve you the precise answer. –  Kani Feb 8 '12 at 19:57

In the inner loop, `j` runs from `i+1` to `n`, that is, through `n-i` values. So altogether, there are

``````sum_{i = 1 to n-1} (n-i)
``````

steps, `(n-1) + (n-2) + ... + (n - (n-1)) = (n-1) + (n-2) + ... . 1`.

Now, for the sum of the first `k` positive integers, there is a closed formula, it's

``````k*(k+1)/2
``````

Here, `k = n-1`.

To work out the formula for the sum of the first `k` positive integers, there are several nice ways, as mentioned in robert king's answer. Allegedly, Gauss worked it out in the first way when he was five years old and the teacher gave the pupils the task to calculate the sum of the integers from 1 to 100 in the hope of having a few quiet minutes. It's better to see if arranged thus:

``````  1   +   2   + ... + (n-1) +   n
n   + (n-1) + ... +   2   +   1
----------------------------------
(n+1) + (n+1) + ... + (n+1) + (n+1) = n*(n+1)
``````
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+1 The sum of the first k integers is explained pretty well here, but you'll want to memorize it... –  grossvogel Feb 8 '12 at 20:01
ah thanks, now i understand where the 1 comes from. so i guess if i understand correctly, the k*(k+1)/2 is just a regular arithmetic formula that i should "just know"... –  user1189352 Feb 8 '12 at 20:09
thx gross for the link, that helped –  user1189352 Feb 8 '12 at 20:10
ahh that graph you edited in helps the visualation! thx –  user1189352 Feb 8 '12 at 20:16

one way of working it out is:

sum=1+2+3+4+...+n

2*sum = 1+2+3+4+...+n + 1 + 2 + 3 + 4 +...+n = 1+(n) + 2+(n-1) + 3+(n-2)..+ (n)+1

2*sum=1+n + 1+n + 1+n...

2*sum = n(1+n)

sum=n*(n+1)/2

but an easier way to see this is to imagine a square or a grid matrix.

as i goes down to each new row, j goes across and extra column to the diagonal of the matrix (as i<=j .. we know j can't get past the diagonal). This means all the operations are a combination of (i,j) on one side of the matrix's diagonal. The number of operations is therefore half the area of the entire matrix. if the matrix is a n*n matrix, then we have about n*n/2 area (but since we can't count the diagonal twice its actually n*(n-1)/2

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Also, i'm not sure if you need to come up with this formula yourself.. it's a fairly standard formula. the sum 1+2+3+..+n comes up in many areas of mathematics. Most people just use it without proving it each time –  robert king Feb 8 '12 at 20:05
thanks robert, the explanation of the square/matrix made it very easy for me to visualize –  user1189352 Feb 8 '12 at 20:08

OK, think like this:

``````When i = 1, inner loop runs (n - 1) times [j = 2 to n]
When i = 2, inner loop runs (n - 2) times [j = 3 to n]
When i = 3, inner loop runs (n - 3) times [j = 4 to n]
....
When i = k, inner loop runs (n - k) times [j = k + 1 to n]
...
When i = n - 1, inner loop runs (n - (n - 1)) = 1 time [j = n to n]
``````

Now sum them up:

``````(n - 1) + (n - 2) + (n - 3) + ... + 1 = n(n - 1) / 2
``````

In the worst case, the `exchange` will be done `n(n - 1) / 2` times.

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thx for the explanation, that helped –  user1189352 Feb 8 '12 at 20:10