Benchmarking the Borg MOEA on the Biobjective bbob-biobj Testbed

Dimo Brockhoff, Pascal Capetillo, Jonathan Hornewall, Raphael Walker

PROCEEDINGS OF THE 2023 GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE COMPANION, GECCO 2023 COMPANION(2023)

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摘要
The Borg MOEA [8] is an optimization algorithm, designed to handle real-world problems of a multi objective and multi-modal nature. In this report, we examine the effectiveness of Borg for solving optimization problems with only two objectives. To this end, we benchmark the performance of the algorithm on the bbob-biobj test suite via the COCO platform, comparing it to current state-of-the-art algorithms. The study uses standard values for all the parameters but one, as retrieved from http://borgmoea.org/. The only parameter that varies between different problem instances is the. parameter, a crucial scale tuning parameter. To adapt this parameter, we devised and applied a heuristic. We find that the algorithm performs respectably, although it does not surpass the current state-of-the-art algorithms for any of the problem instances examined, and particularly loses performance on problems with a high-dimensional search space. Additionally, we observed that our heuristic for tuning the.-parameter results in significant performance improvements compared to using a fixed value for epsilon.
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关键词
Benchmarking,Black-box optimization,Bi-objective optimization,Multi-modal,Multi-objective
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