Enhanced symbolic regression through local variable transformations

Conference Paper (2017)
Author(s)

Jiří Kubalìk (Czech Technical University)

E. Derner (Czech Technical University)

R. Babuška (TU Delft - Learning & Autonomous Control, Czech Technical University)

Research Group
Learning & Autonomous Control
DOI related publication
https://doi.org/10.5220/0006505200910100
More Info
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Publication Year
2017
Language
English
Research Group
Learning & Autonomous Control
Volume number
1
Pages (from-to)
91-100
ISBN (print)
978-989-758-274-5

Abstract

Genetic programming (GP) is a technique widely used in a range of symbolic regression problems, in particular when there is no prior knowledge about the symbolic function sought. In this paper, we present a GP extension introducing a new concept of local transformed variables, based on a locally applied affine transformation of the original variables. This approach facilitates finding accurate parsimonious models. We have evaluated the proposed extension in the context of the Single Node Genetic Programming (SNGP) algorithm on synthetic as well as real-problem datasets. The results confirm our hypothesis that the transformed variables significantly improve the performance of the standard SNGP algorithm.

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