A Multi-Objective Genetic Programming with Size Diversity for Symbolic Regression Problem
Created by W.Langdon from
gp-bibliography.bib Revision:1.8620
- @InProceedings{DBLP:conf/cec/ZhangLHJLP25,
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author = "Yujie Zhang and Guoquan Li and Zhengwen Huang and
Jinshuo Jia and Xiang Li and Donghui Peng",
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title = "A Multi-Objective Genetic Programming with Size
Diversity for Symbolic Regression Problem",
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booktitle = "2025 IEEE Congress on Evolutionary Computation (CEC)",
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year = "2025",
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editor = "Yaochu Jin and Thomas Baeck",
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address = "Hangzhou, China",
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month = "8-12 " # jun,
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming, Solid
modeling, Adaptation models, Accuracy, Fluids,
Optimization methods, Predictive models, Prediction
algorithms, Complexity theory, Sorting, symbolic
regression, Multi-Objective, Non-dominated Sorting,
fluid dispensing systems",
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isbn13 = "979-8-3315-3432-5",
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timestamp = "Mon, 30 Jun 2025 01:00:00 +0200",
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biburl = "
https://dblp.org/rec/conf/cec/ZhangLHJLP25.bib",
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bibsource = "dblp computer science bibliography, https://dblp.org",
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URL = "
https://doi.org/10.1109/CEC65147.2025.11042993",
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DOI = "
10.1109/CEC65147.2025.11042993",
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abstract = "Genetic programming has been positioned as a
fit-for-purpose approach for symbolic regression.
Researchers tend to select algorithms that produce a
model with low complexity and high accuracy.
Multi-objective genetic programming (MOGP) is a
promising approach for finding appropriate models by
considering tradeoffs between accuracy and complexity.
The MOGP has gained significant attention for
non-dominated sorting genetic algorithm II (NSGA-II).
However, NSGA-II tends to excessively select
individuals of lower complexity, making NSGA-II
inefficient in real world applications. SD can be a
strategy to promote the evolutionary process by
adapting selection pressures for individuals of various
size. It deals with the excessive tendency to select
low complexity individuals in NSGA-II.We also introduce
a practical industrial case of defect detection for
dispensing machines. By modelling the dispensing volume
of the fluid dispensing systems, defects in the
dispensing machine can be detected under different
external environmental factors.For the validation of
SD, other MOGP algorithms are compared with the
improved NSGA-II algorithm, NSGA-II with SD. By
comparing multi-objective optimisation methods tested
on seven general datasets and an industrial case about
defect prediction, the experimental results show that
performance of the proposed approach is superior or
same to other models in terms of accuracy. In terms of
complexity, performance of the proposed approach is
satisfactory.",
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notes = "also known as \cite{zhang:2025:CEC11}
\cite{11042993}",
- }
Genetic Programming entries for
Yujie Zhang
Guoquan Li
Zhengwen Huang
Jinshuo Jia
Xiang Li
Donghui Peng
Citations