Paper ID: 2208.04828
Global Evaluation for Decision Tree Learning
Fabian Spaeh, Sven Kosub
We transfer distances on clusterings to the building process of decision trees, and as a consequence extend the classical ID3 algorithm to perform modifications based on the global distance of the tree to the ground truth--instead of considering single leaves. Next, we evaluate this idea in comparison with the original version and discuss occurring problems, but also strengths of the global approach. On this basis, we finish by identifying other scenarios where global evaluations are worthwhile.
Submitted: Aug 9, 2022