# Identifying Clumps (Segments) of Data for Clump Sort Implementation

I am looking for Clump Sort implementation in any language or its pseudo code. The original research paper doesn't contain any. Since I am unable to find any existing solution (mostly because this technique is quite new), I decided to implement it myself. So as the first step I need to identify the clumps of data in our numeric input. I understand that this might go towards Artificial Intelligence but I am ready for it as I know the basics anyway.

So any ideas about how to identify the clumps in data guys? For now I want to focus on clumps of numbers that are ascending or descending.

For example:
`3, 7, 10, 56, 4, 1, 3, 34`
has 3 clumps in asc order:
`3, 7, 10, 56`,
`4`,
`1, 3, 34`

My question is how to do this programmatically?

Thanks!

### UPDATE:

Alright, after spending some time I've found a solution but I have no idea whether the same has been in the paper author's mind. If it was then we've probably added to the complexity of the heap sort instead of minimizing it.

``````int[] input = { 30, 7, 10, 56, 4, 1, 3, 34 };
List<ClumpStartEnd> clumps = new List<ClumpStartEnd>();
public void ClumpIdentifier(int start)
{
for (int i = start + 1; i < input.Length + 1; i++)
{
if (i == input.Length || input[i] < input[i - 1])
{
ClumpIdentifier(i);
break;
}
}
}
``````
-
I've just written to the author of the paper. Shall let you know what I find. –  boost Nov 28 '10 at 12:59
Ok, I'll wait... –  Muhammad Yasir Nov 28 '10 at 13:03
First, what's not trivial about detecting the increasing sequences? Just compare each value to the previous value, see if it's higher or lower. Storing the boundaries is another matter. Second, I note that the paper abstract doesn't compare with Timsort, which I would suggest is a better choice than Heapsort as the target to beat. –  Steve Jessop Nov 28 '10 at 13:41
Many things are obvious and trivial in life. For example Bubble Sort. But will you ever dare to use it in your codes? The same goes here. This solution has a large complexity. See the update in my question. Also this is for a university presentation so I don't have a choice here. (Thanks for the suggestion though) –  Muhammad Yasir Nov 28 '10 at 14:35
It has complexity O(n). Certainly no algorithm exists which finds all clumps in complexity less than O(n), because you have to look at all the data. I haven't read the paper, so it may be that the clump sort could work with an approximate division into clumps. –  Steve Jessop Nov 28 '10 at 16:42