Scalable and Customizable Benchmark Problems for Many-Objective Optimization
January 26, 2020 ยท Declared Dead ยท ๐ Applied Soft Computing
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Authors
Ivan Reinaldo Meneghini, Marcos Antonio Alves, Antรณnio Gaspar-Cunha, Frederico Gadelha Guimarรฃes
arXiv ID
2001.11591
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.AI
Citations
32
Venue
Applied Soft Computing
Last Checked
3 months ago
Abstract
Solving many-objective problems (MaOPs) is still a significant challenge in the multi-objective optimization (MOO) field. One way to measure algorithm performance is through the use of benchmark functions (also called test functions or test suites), which are artificial problems with a well-defined mathematical formulation, known solutions and a variety of features and difficulties. In this paper we propose a parameterized generator of scalable and customizable benchmark problems for MaOPs. It is able to generate problems that reproduce features present in other benchmarks and also problems with some new features. We propose here the concept of generative benchmarking, in which one can generate an infinite number of MOO problems, by varying parameters that control specific features that the problem should have: scalability in the number of variables and objectives, bias, deceptiveness, multimodality, robust and non-robust solutions, shape of the Pareto front, and constraints. The proposed Generalized Position-Distance (GPD) tunable benchmark generator uses the position-distance paradigm, a basic approach to building test functions, used in other benchmarks such as Deb, Thiele, Laumanns and Zitzler (DTLZ), Walking Fish Group (WFG) and others. It includes scalable problems in any number of variables and objectives and it presents Pareto fronts with different characteristics. The resulting functions are easy to understand and visualize, easy to implement, fast to compute and their Pareto optimal solutions are known.
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