The problem:
N nodes are related to each other by a ‘closeness’ factor ranging from 0 to 1, where a factor of 1 means that the two nodes have nothing in common and 0 means the two nodes are exactly alike.
If two nodes are both close to another node (i.e. they have a factor close to 0) then this doesn’t mean that they will be close together, although probabilistically they do have a much higher chance of being close together.
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The question:
If another node is placed in the set, find the node that it is closest to in the shortest possible amount of time.
This isn’t a homework question, this is a real world problem that I need to solve – but I’ve never taken any algorithm courses etc so I don’t have a clue what sort of algorithm I should be researching.
I can index all of the nodes before another one is added and gather closeness data between each node, but short of comparing all nodes to the new node I haven’t been able to come up with an efficient solution. Any ideas or help would be much appreciated 🙂
Because your ‘closeness’ metric obeys the triangle inequality, you should be able to use a variant of BK-Trees to organize your elements. Adapting them to real numbers should simply be a matter of choosing an interval to quantize your number on, and otherwise using the standard Bk-Tree procedure. Some experimentation may be required – you might want to increase the resolution of the quantization as you progress down the tree, for instance.