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Evolvability Degeneration in Multi-Objective Genetic Programming for
  Symbolic Regression

Evolvability Degeneration in Multi-Objective Genetic Programming for Symbolic Regression

14 February 2022
Dazhuang Liu
M. Virgolin
T. Alderliesten
Peter A. N. Bosman
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Papers citing "Evolvability Degeneration in Multi-Objective Genetic Programming for Symbolic Regression"

4 / 4 papers shown
Title
Interpretable Non-linear Survival Analysis with Evolutionary Symbolic Regression
Interpretable Non-linear Survival Analysis with Evolutionary Symbolic Regression
Luigi Rovito
Marco Virgolin
20
0
0
08 Apr 2025
Enhancing Symbolic Regression with Quality-Diversity and Physics-Inspired Constraints
Enhancing Symbolic Regression with Quality-Diversity and Physics-Inspired Constraints
J.-P. Bruneton
43
0
0
24 Mar 2025
Concurrent Neural Tree and Data Preprocessing AutoML for Image
  Classification
Concurrent Neural Tree and Data Preprocessing AutoML for Image Classification
Anish Thite
Mohan Dodda
Pulak Agarwal
Jason Zutty
23
3
0
25 May 2022
Less is More: A Call to Focus on Simpler Models in Genetic Programming
  for Interpretable Machine Learning
Less is More: A Call to Focus on Simpler Models in Genetic Programming for Interpretable Machine Learning
M. Virgolin
Eric Medvet
T. Alderliesten
Peter A. N. Bosman
14
6
0
05 Apr 2022
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