Automatic Design of Specialized Variation Operators for the Multi-Objective Quadratic Assignment Problem
Created by W.Langdon from
gp-bibliography.bib Revision:1.8464
- @InProceedings{morales-paredes:2025:GECCO2,
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author = "Adrian Isai Morales-Paredes and Julio Juarez and
Jesus Guillermo Falcon-Cardona and Hugo Terashima-Marin and
Carlos {Coello Coello}",
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title = "Automatic Design of Specialized Variation Operators
for the Multi-Objective Quadratic Assignment Problem",
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booktitle = "Proceedings of the 2025 Genetic and Evolutionary
Computation Conference",
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year = "2025",
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editor = "Marie-Eleonore Kessaci and Anna V. Kononova",
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pages = "1153--1161",
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address = "Malaga, Spain",
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series = "GECCO '25",
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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, grammatical
evolution, Learning for Evolutionary Computation",
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isbn13 = "979-8-4007-1465-8",
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URL = "
https://doi.org/10.1145/3712256.3726456",
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DOI = "
doi:10.1145/3712256.3726456",
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size = "9 pages",
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abstract = "The development of specialized, domain-specific
operators has significantly enhanced the performance of
evolutionary algorithms for solving optimization
problems. However, creating such operators often
requires substantial effort from human experts, making
the process slow, resource-intensive, and heavily
reliant on domain knowledge. To overcome these
limitations, generation hyper-heuristics provide a
framework for automating the design of variation
operators by evolving combinations of heuristic
components without direct expert input. In this work,
we propose a generation hyper-heuristic method based on
grammatical evolution to automatically design variation
operators (crossover and mutation) tailored to the
multi-objective quadratic assignment problem (mQAP)-a
challenging combinatorial optimization problem with
many real-world applications. Using the proposed
method, variation operators were generated considering
six mQAP instances with two and three objectives,
leveraging MOEA/D as a multi-objective optimizer. For
validation, the generated operators were evaluated on
unseen instances. Our experimental results indicate
that the evolved operators enhance the performance of
MOEA/D compared to standard crossover operators.
Furthermore, the top-performing operator in training
did not always generalize best to larger instances,
while some lower-ranked operators showed better
adaptability. These results highlight the potential of
automated operator design in effectively tackling
complex optimization problems like the mQAP.",
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notes = "GECCO-2025 L4EC A Recombination of the 34th
International Conference on Genetic Algorithms (ICGA)
and the 30th Annual Genetic Programming Conference
(GP)",
- }
Genetic Programming entries for
Adrian Isai Morales-Paredes
Julio Juarez
Jesus Guillermo Falcon-Cardona
Hugo Terashima-Marin
Carlos Artemio Coello Coello
Citations