Let's say that I have a 2D array that looks like:
________________ |10|15|14|20|30| |14|10|73|71|55| |73|30|42|84|74| |14|74|XX|15|10| ----------------
As I showed, the columns don't need to be same size.
Now I need to find the best matching for each column (the one that has most exactly the same items and lowest different). Of course, I could do that in n^2 but it's too slow for me. How can I do it?
I thought about a k-dimension tree and finding the closest neighbor for every one, but I don't know if it's good and it will work as I want (probably not).
Result for example:
- First column is most likely third (only three different - 10, 14, 42)
- Second column -> fifth (only two different - 15 and 55)
and so on and so on... :)