On the depth of decision trees over infinite 1-homogeneous binary information systems

oleh: Mikhail Moshkov

Format: Article
Diterbitkan: Elsevier 2021-07-01

Deskripsi

In this paper, we study decision trees, which solve problems defined over a specific subclass of infinite information systems, namely: 1-homogeneous binary information systems. It is proved that the minimum depth of a decision tree (defined as a function on the number of attributes in a problem’s description) grows – in the worst case – logarithmically or linearly for each information system in this class. We consider a number of examples of infinite 1-homogeneous binary information systems, including one closely related to the decision trees constructed by the CART algorithm.