A Multitask Genetic Programming Approach with ANew Individual Representation to Symbolic Regression
Created by W.Langdon from
gp-bibliography.bib Revision:1.8344
- @InProceedings{Liang:2025:ICEAAI,
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author = "Jing Liang and Wenjing Li and Yahui Jia and Ying Bi",
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title = "A Multitask Genetic Programming Approach with {ANew}
Individual Representation to Symbolic Regression",
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booktitle = "2025 International Conference on Electrical Automation
and Artificial Intelligence (ICEAAI)",
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year = "2025",
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pages = "1301--1306",
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month = jan,
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keywords = "genetic algorithms, genetic programming, Automation,
Heuristic algorithms, Benchmark testing, Multitasking,
Mathematical models, Artificial intelligence,
Regression tree analysis, Knowledge transfer, symbolic
regression, evolutionary multitask",
-
DOI = "
doi:10.1109/ICEAAI64185.2025.10956846",
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abstract = "Symbolic regression is a task aimed at auto-matically
discovering and constructing mathematical models from
data that describe the complex relationships between
inputs and outputs. Evolutionary multitask methods have
demonstrated powerful capabilities across various
domains, but research in the field of symbolic
regression remains relatively limited. To further
explore the potential of evo-lutionary multi task
algorithms in symbolic regression, this paper proposes
a multitask Genetic Programming (GP) approach with a
new individual representation (IRMTGP), which encodes
shared knowledge as a shared tree, explicitly
facilitating knowledge transfer between tasks.
Specifically, in IRMTGP, each task's solution is
composed of a shared tree and an unshared tree, where
the shared tree captures common knowledge across tasks,
and the unshared tree focuses on learning the
characteristics of individual tasks. Furthermore, to
learn the optimal shared and unshared trees, a new
fitness function and evolutionary process are designed.
Comparing IRMTGP with GP and Multifactorial GP on six
multi task problems composed of four symbolic
regression benchmarks, IRMTGP achieves smaller
regression errors and better generalisation
capabilities in most cases.",
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notes = "Also known as \cite{10956846}",
- }
Genetic Programming entries for
Jing Liang
Wenjing Li
Ya-Hui Jia
Ying Bi
Citations