Linear Genetic Programming for Design Graph Neural Networks for Node Classification
Created by W.Langdon from
gp-bibliography.bib Revision:1.8528
- @InProceedings{krzywda:2025:GECCOcomp,
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author = "Maciej Krzywda and Szymon Lukasik and
Amir H. Gandomi",
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title = "Linear Genetic Programming for Design Graph Neural
Networks for Node Classification",
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booktitle = "Graph-based Genetic Programming",
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year = "2025",
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editor = "Roman Kalkreuth and Yuri Lavinas and Eric Medvet and
Giorgia Nadizar and Giovanni Squillero and
Alberto Tonda and Dennis G. Wilson",
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pages = "2167--2171",
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address = "Malaga, Spain",
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series = "GECCO '25 Companion",
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month = "14-18 " # jul,
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organisation = "SIGEVO",
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publisher = "Association for Computing Machinery",
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publisher_address = "New York, NY, USA",
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keywords = "genetic algorithms, genetic programming, linear
genetic programming, evolutionary algorithms, graph
neural networks, node classification, classification",
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isbn13 = "979-8-4007-1464-1",
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URL = "
https://doi.org/10.1145/3712255.3734278",
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DOI = "
doi:10.1145/3712255.3734278",
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size = "5 pages",
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abstract = "In recent years, significant efforts have been made to
address graph node classification tasks by applying
graph neural networks and methods based on label
propagation. Despite the progress achieved by these
approaches, their success often hinges on complex
architectures and algorithms, sometimes leading to the
oversight of crucial technical details. One crucial
aspect of the innovative approach in designing
artificial neural networks is suggesting a novel neural
architecture. Currently used architectures have
primarily been developed manually by human experts,
which is time-consuming and error-prone. That is why
adopting more sophisticated semiautomatic methods, such
as Neural Architecture Search, has become commonplace.
This paper introduces and assesses a Linear Genetic
Programming approach for designing graph neural
networks in the context of Node Classification. Our
approach aims to systematically define the GCN
parameter space, drawing inspiration from recent
research on design principles. By doing so, our method
seeks to balance achieving satisfactory performance and
optimizing memory and computation resources, thus
offering a more efficient alternative to conventional
approaches from the neural architecture search area.",
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notes = "GECCO-2025 GGP workshop A Recombination of the 34th
International Conference on Genetic Algorithms (ICGA)
and the 30th Annual Genetic Programming Conference
(GP)",
- }
Genetic Programming entries for
Maciej Krzywda
Szymon Lukasik
A H Gandomi
Citations