Effective data structure for both deleteMin and search by key operations

I have 100 sets of A objects, each set corresponding to a query point Qi, 1 <= i <= 100.

``````class A {

int id;
int distance;
float x;
float y;

}
``````

In each iteration of my algorithm, I select one query point Qi and extract from the corresponding set the object having the minimum distance value. Then, I have to find this specific object in all 100 sets, searching with its id, and remove all those objects.

If I use a heap for each set of objects, it is cheap to extract the object with MIN(distance). However, I will not be able to find the same object in other heaps searching with the id, because the heap is organized with the distance value. Further, updating the heap is expensive.

Another option I have considered is using a map for each set. This way searching (find operation) by id is cheap. However, extracting the element with the minimum value takes linear time (it has to examine every element in the map).

Is there any data structure that I could use that is efficient for both the operations I need?

• extract_min(distance)
• find(id)

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Did some formatting for you. Please use the buttons above the edit box to format your code properly. –  John Dibling Nov 15 '10 at 16:57
Not a C++ girl, so can't really contribute a meaningful answer, but sometimes for cases like this, easiest solution is two data structures: map or hashtable to lookup items by index, sorted array / heap / tree set to find the minimum item. –  Juliet Nov 15 '10 at 18:18

`std::map` or `boost::multi_index`

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Thanks, boost::multi_index did the job –  Tasos Arvanitis Nov 17 '10 at 20:55
One simple approach is to have two maps for each data set. The first one contains all the data items sorted by id. The second would be a `multimap` and map distance to id so that you could easily figure out what id the lowest distance corresponds to. This one would be ordered by distance to make finding the min cheap (since it would use distance as the key). You could use `map` instead of `multimap` if you know that distances will always be unique.