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ISMIS
2011
Springer

An Evolutionary Algorithm for Global Induction of Regression Trees with Multivariate Linear Models

12 years 10 months ago
An Evolutionary Algorithm for Global Induction of Regression Trees with Multivariate Linear Models
In the paper we present a new evolutionary algorithm for induction of regression trees. In contrast to the typical top-down approaches it globally searches for the best tree structure, tests at internal nodes and models at the leaves. The general structure of proposed solution follows a framework of evolutionary algorithms with an unstructured population and a generational selection. Specialized genetic operators efficiently evolve regression trees with multivariate linear models. Bayesian information criterion as a fitness function mitigate the over-fitting problem. The preliminary experimental validation is promising as the resulting trees are less complex with at least comparable performance to the classical top-down counterpart.
Marcin Czajkowski, Marek Kretowski
Added 15 Sep 2011
Updated 15 Sep 2011
Type Journal
Year 2011
Where ISMIS
Authors Marcin Czajkowski, Marek Kretowski
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