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I am looking for an efficient way to represent and retrieve the geographical relationship eg. districts->states->USA. This should accommodate any level of hierarchy eg. district->region->states->big region(East/west/south/north) -> USA.

My requirements are

  1. I mostly operate at the lowest level - so getting all of them fast should be the first priority. Constant time is preferred.
  2. Then, I want to perform aggregates eg.combine districts data at state level (so obtain all the children for a node) easily - this is the second criteria.
  3. Order at a level does not matter -eg. For NC, I don't mind if I first get Raleigh or Fayetville.

As you have almost have guessed - A Tree datastructure lends itself to the problem logically. But I could not find a way to get all the leaves efficiently. I can check if a node is leaf in O(log n) time but I have check each of the nodes for that.

I have looked B, B+ trees but what I didn't understand is they maintain their order using some ordering like ascending or descending.

My gut feeling is there should efficient solutions for this because - windows or any file system does this. Files->Folders->Big Folders->C -> My Computer. Also this kind of computations must be done in data mining lets say for clustering (I remember reading something of this sorts)

Any leads in this direction would be appreciated.


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Can you be more specific in describing exactly what you want to do with the structure? Your #1 isn't completely clear; as Welbog says, you can't retrieve n items in constant time. And your "check of a node is leaf in O(log n)" seems to imply you're doing something other than straight aggregation from leaf to root. –  John Pirie Jun 2 '09 at 14:47
You can retrieve n items in constant time if the n items are already stored in a cached collection - which might well make sense for the common case of all children of a node, e.g. see my answer below. –  mikera Jun 15 '10 at 16:28

2 Answers 2

You're talking about retrieving n unique items matching a given criterion (in this case everything at a particular level in the hierarchy under a given node). You can't get n unique items from a data structure in constant time unless you've precomputed all possible criteria. At the very least you'll have to iterate through those n items.

There are many data structures and combinations of data structures that you can use to make different types of uses more efficient. You're right that B and B+ trees work well in this situation, which is why I'm going to suggest you use a relational database for this application, because they are the best and most robust B-tree implementations you'll be able to find. Matching leaf nodes and computing aggregates are pretty much what they're for. Unless you have some particular reason not use a RDBMS subsystem, this is probably your best bet.

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I am retrieving these values from a RDBMS, what I am looking for is a structure in code to perform compuatations efficiently. –  satyajit Jun 2 '09 at 16:43
The structure to perform those computations efficiently is called "SQL". That's what it's for. Is there something specific you can't manage using SQL that you need? –  Welbog Jun 2 '09 at 17:38
SQL is very useful and general purpose but it isn't even remotely efficient compared to a decent in-memory data structure. Consider rendering a dynamically determined subset of this dataset at 50 FPS for example. –  mikera Jun 15 '10 at 16:24

Create a tree of nodes where each node contains:

  • A pointer to the parent node (or null for the root node)
  • A collection (e.g. HashMap or ArrayList in Java) of child nodes
  • Any data payload associated with the node (e.g. geographic coordinates so you can do distance searching)

If you like you can augment this with a a HashMap based index of String -> Node for O(1) access to nodes. But for this problem I wouldn't worry about the tree search cost, since you are not likely to have more than 5-10 levels max.

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