Please use this identifier to cite or link to this item: https://ruomoplus.lib.uom.gr/handle/8000/1934
Title: Learning-assisted improvements in Adaptive Variable Neighborhood Search
Authors: Karakostas, Panagiotis 
Sifaleras, Angelo 
Author Department Affiliations: Department of Applied Informatics 
Department of Applied Informatics 
Author School Affiliations: School of Information Sciences 
School of Information Sciences 
Subjects: FRASCATI__Natural sciences__Computer and information sciences
FRASCATI__Natural sciences__Mathematics__Applied Mathematics
Keywords: Learning-assisted intelligent optimization
Adaptive search
Metaheuristics
Traveling Salesman Problem
Quadratic Assignment Problem
Issue Date: 24-Feb-2025
Publisher: Elsevier
Journal: Swarm and Evolutionary Computation 
ISSN: 2210-6502
Volume: 94
Start page: 101887
Abstract: 
This study presents the design and integration of novel adaptive components within the Double-Adaptive General Variable Neighborhood Search (DA-GVNS) algorithm, aimed at improving its overall efficiency. These adaptations utilize iteration-based data to refine the search process, with enhancements such as an adaptive reordering mechanism in the refinement phase and a knowledge-guided approach to adjust the search strategy. Additionally, an adaptive mechanism for dynamically controlling the shaking intensity was introduced. The proposed knowledge-guided adaptations demonstrated superior performance over the original DA-GVNS framework, with the most effective scheme selected for further evaluation. Initially, the symmetric Traveling Salesman Problem (TSP) was used as a benchmark to quantify the impact of these mechanisms, showing significant improvements through rigorous statistical analysis. A comparative study was then conducted against six advanced heuristics from the literature. Finally, the most promising knowledge-guided GVNS (KG-GVNS) was tested against the original DA-GVNS on selected instances of the Quadratic Assignment Problem (QAP), where detailed statistical analysis highlighted its competitive advantage and robustness in addressing complex combinatorial optimization problems.
URI: https://ruomoplus.lib.uom.gr/handle/8000/1934
DOI: 10.1016/j.swevo.2025.101887
Rights: Αναφορά Δημιουργού 4.0 Διεθνές
Corresponding Item Departments: Department of Applied Informatics
Department of Applied Informatics
Appears in Collections:Articles

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