A General Feature-Informed Crossover for Two-Stage Feature Selection in Symbolic Regression
Created by W.Langdon from
gp-bibliography.bib Revision:1.8620
- @InProceedings{zhang:2025:CEC5,
-
author = "Hengzhe Zhang and Qi Chen and Bing Xue and
Wolfgang Banzhaf and Mengjie Zhang",
-
title = "A General Feature-Informed Crossover for Two-Stage
Feature Selection in Symbolic Regression",
-
booktitle = "2025 IEEE Congress on Evolutionary Computation (CEC)",
-
year = "2025",
-
editor = "Yaochu Jin and Thomas Baeck",
-
address = "Hangzhou, China",
-
month = "8-12 " # jun,
-
publisher = "IEEE",
-
keywords = "genetic algorithms, genetic programming, Training,
Machine learning, Evolutionary computation, Feature
extraction, Iterative methods, Symbolic Regression,
Feature Selection",
-
isbn13 = "979-8-3315-3432-5",
-
DOI = "
10.1109/CEC65147.2025.11043089",
-
abstract = "Genetic programming-based symbolic regression is a
widely used machine learning technique, but its
effectiveness can be limited as the number of input
features increases. In genetic programming, two-stage
feature selection has been extensively applied to
enhance performance when dealing with a large number of
input features. Existing two-stage feature selection
methods typically require reinitializing new GP trees
based on the selected features after feature selection,
which disrupts the building blocks accumulated during
evolution. In this paper, we propose a crossover
operator that is aware of the selected features to
leverage the feature selection results, thereby
bypassing the need for reinitialization. This operator
guides the crossover process to prioritize selected
features, gradually eliminating unimportant features
while preserving evolved building blocks. Experimental
results validate the proposed method across three
different feature-selection mechanisms on 98 datasets,
demonstrating its effectiveness and broad applicability
across various feature-selection strategies.",
-
notes = "also known as \cite{11043089}",
- }
Genetic Programming entries for
Hengzhe Zhang
Qi Chen
Bing Xue
Wolfgang Banzhaf
Mengjie Zhang
Citations