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Decision Trees with at Most 19 Vertices for Knowledge Representation

Author name : MOHAMMAD MOHIUDDIN AZAD
Publication Date : 2020-12-17
Journal Name : Lecture Notes in Computer Science

Abstract

We study decision trees as a means of representation of knowledge. To this end, we design two techniques for the creation of CART (Classification and Regression Tree)-like decision trees that are based on bi-objective optimization algorithms. We investigate three parameters of the decision trees constructed by these techniques: number of vertices, global misclassification rate, and local misclassification rate.

Keywords

Decision Trees

Publication Link

https://link.springer.com/chapter/10.1007%2F978-3-662-62798-3_1

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