Imagine that the universe of all known mappings between the values of a set of variables V and a set of tag names T (classification labels) was known. Further, assume that the total space of unique variable value combinations is large (> 100B points), the size of the tag set is relatively small (thousands of elements) and the number of variables is very small (4-10).

What is a algorithm for building a classifier function that provides a perfect mapping (matching the a priori knowledge with no false positives or false negatives) from variable values to labels with the following space and time complexity goals:

- Time complexity lower than O(|V|*log|T|)
- Space complexity less than O(|V|
^{k}), k ≤*e*

Or, rephrased as a decision tree problem:

- How can a decision tree algorithm be tuned to create a perfect mapping?
- How can the training data be represented efficiently to guarantee that?

thisis the classification rule you should be using, not trying to get a decision tree to match this prior knowledge. Perhaps if you explain the context? – Ben Allison Apr 4 '13 at 15:08