Automated design of specialized variation operators using a generation hyper heuristic for the multi objective quadratic assignment problem
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- @MastersThesis{morales-paredes:mastersthesis,
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author = "Adrian Isai {Morales Paredes}",
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title = "Automated design of specialized variation operators
using a generation hyper heuristic for the multi
objective quadratic assignment problem",
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school = "Instituto Tecnologico y de Estudios Superiores de
Monterrey",
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year = "2025",
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type = "Master of Science in Computer Science",
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address = "Mexico",
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month = jun,
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keywords = "genetic algorithms, genetic programming",
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keywords = "genetic algorithms, genetic programming, Grammatical
evolution, Hyper-heuristics, Multi-objective
optimization, Genetic operators, QAP, Technology",
-
URL = "
https://hdl.handle.net/11285/703861",
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size = "90 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. a generation
hyper-heuristic method based on grammatical evolution
using the hypervolume indicator (HV) as part of its
selection mechanism 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, is proposed. The proposed
method was used to generate variation operators
following a grammar-defined search space. This
generation was guided by six mQAP instances featuring
10, 20, and 30 variables with two and three objectives,
leveraging MOEA/D as its multi-objective optimizer.
During the generation process, the hyper-heuristic
exhibited consistent improvements in the HV of the
population throughout the evolutionary process,
demonstrating its ability to evolve increasingly
effective operators over time. To validate the
hyper-heuristic output, the generated operators were
evaluated on sixteen unseen and diverse mQAP instances.
From experimental results, the evolved operators
consistently outperformed standard ones regarding
median HV in all test instances. Statistical tests
further indicate that these evolved operators possess
strong exploration and exploitation capabilities for
problems with permutation-based solution
representations and behave distinctly from conventional
operators. Pairwise comparisons confirmed their
superiority over human-designed recombination operators
such as PMX and CX in HV performance. These results
highlight the potential of automated operator design in
effectively solving complex combinatorial optimization
problems, such as the mQAP. Beyond this specific case,
the proposed framework contributes to the field of
automated operator design by introducing a new
methodology applicable to multi-objective combinatorial
optimization scenarios.",
-
notes = "Morales Paredes__2025",
- }
Genetic Programming entries for
Adrian Isai Morales-Paredes
Citations