Performance assessment of population-based multiobjective optimization algorithms using composite indicators
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Abstract
The performance of population-based multiobjective
optimization algorithms is usually evaluated using indicators
assessing the quality of the approximation set generated according
to convergence, cardinality, spread, and uniformity (the
combination of the last two known as diversity). Since not all
quality indicators can capture all these properties, we propose
to aggregate already-existing indicators into a single measure
informing about the algorithm’s performance from a general
perspective. To synthesize the desired quality indicators, we build
three composite quality indicators (weak, strong, and mixed)
based on the reference point approach. This approach enables
the use of desirable value ranges for the aggregated quality
indicators, defined by aspiration and reservation levels, that
allow knowing which algorithms perform better, within, or worse
than the desired limits. Each of the composite quality indicators
proposed enables a different compensation degree among the
aggregated indicators, and their joint use permits a deep insight
into the algorithms’ performance. In addition, we show that
the weak and mixed composite indicators are Pareto-compliant,
and the strong one is weakly Pareto-compliant if at least one
of the aggregated indicators is Pareto-compliant. Finally, we
demonstrate the benefits of our proposal when comparing many
population-based algorithms on three-, five-, and eight-objective
optimization problems.
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Bibliographic citation
R. Saborido, A. B. Ruiz, S. González-Gallardo, M. Luque and A. Borrego, "Performance Assessment of Population-Based Multiobjective Optimization Algorithms Using Composite Indicators," in IEEE Transactions on Evolutionary Computation, doi: 10.1109/TEVC.2025.3544412
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Except where otherwised noted, this item's license is described as Atribución 4.0 Internacional










