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Constrained Hybrid Metaheuristic: A Universal Framework for Continuous Optimisation

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This paper presents the constrained Hybrid Metaheuristic (cHM) algorithm as a general framework for continuous optimisation. Unlike many existing metaheuristics that are tailored to specific function classes or problem domains, cHM is designed to operate across a broad spectrum of objective functions, including those with unknown, heterogeneous, or complex properties such as non-convexity, non-separability, and varying smoothness. We provide a formal description of the algorithm, highlighting its modular structure and two-phase operation, which facilitates dynamic adaptation to the problem's characteristics. A key feature of cHM is its ability to harness synergy between both candidate solutions and component metaheuristic strategies. This property allows the algorithm to apply the most appropriate search behaviour at each stage of the optimisation process, thereby improving convergence and robustness. Our extensive experimental evaluation on 28 benchmark functions demonstrates that cHM consistently matches or outperforms traditional metaheuristics in terms of solution quality and convergence speed. In addition, a practical application of the algorithm is demonstrated for a feature selection problem in the context of data classification. The results underscore its potential as a versatile and effective black-box optimiser suitable for both theoretical research and practical applications.

Piotr A. Kowalski, Szymon Kucharczyk, Jacek Ma\'ndziuk• 2026

Related benchmarks

TaskDatasetResultRank
Global OptimizationSalomon function
Std Dev Objective Value0.00e+0
16
OptimizationRastrigin
Standard Deviation0.001
9
ClassificationLoan dataset (Kaggle) (test)
Average Cost0.143
7
ClassificationDiabetic Retinopathy UCI
Average Cost0.267
7
ClassificationHeart Disease Cleveland 79 (test)
Average Cost0.089
7
Continuous OptimisationAckley02
Mean Best Fitness0.001
6
Continuous OptimizationAckley02
Std Dev of Mean Best Fitness0.005
6
Continuous OptimizationBeale
Std Dev of Mean Best Fitness0.004
6
Continuous OptimizationBohachevsky 01
Std Dev of Mean Best Fitness0.00e+0
6
Continuous OptimizationPrice 02
Std Dev of Mean Best Fitness0.02
6
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