A Novel Pareto-optimal Ranking Method for Comparing Multi-objective Optimization Algorithms
Amin Ibrahim, Azam Asilian Bidgoli, Shahryar Rahnamayan, Kalyanmoy Deb

TL;DR
This paper introduces a new Pareto-based multi-metric ranking method for evaluating multi-objective optimization algorithms, enabling comprehensive assessment across multiple performance indicators.
Contribution
The paper presents a scalable, multi-metric ranking approach using Pareto optimality, accommodating any number of performance metrics for comparing multi- and many-objective algorithms.
Findings
Successfully ranked 10 algorithms using 10 metrics.
Results aligned well with established competition rankings.
Method is adaptable to various metrics and applications.
Abstract
As the interest in multi- and many-objective optimization algorithms grows, the performance comparison of these algorithms becomes increasingly important. A large number of performance indicators for multi-objective optimization algorithms have been introduced, each of which evaluates these algorithms based on a certain aspect. Therefore, assessing the quality of multi-objective results using multiple indicators is essential to guarantee that the evaluation considers all quality perspectives. This paper proposes a novel multi-metric comparison method to rank the performance of multi-/ many-objective optimization algorithms based on a set of performance indicators. We utilize the Pareto optimality concept (i.e., non-dominated sorting algorithm) to create the rank levels of algorithms by simultaneously considering multiple performance indicators as criteria/objectives. As a result, four…
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Taxonomy
TopicsMetaheuristic Optimization Algorithms Research · Advanced Algorithms and Applications
MethodsSparse Evolutionary Training
