MOLE: Digging Tunnels Through Multimodal Multi-Objective Landscapes

Schäpermeier L.; Grimme C.; Kerschke P.

Research article in edited proceedings (conference) | Peer reviewed

Abstract

Recent advances in the visualization of continuous multimodal multi-objective optimization (MMMOO) landscapes brought a new perspective to their search dynamics. Locally eficient (LE) sets, often considered as traps for local search, are rarely isolated in the decision space. Rather, intersections by superposing attraction basins lead to further solution sets that at least partially contain better solutions. The Multi-Objective Gradient Sliding Algorithm (MOGSA) is an algorithmic concept developed to exploit these superpositions. While it has promising performance on many MMMOO problems with linear LE sets, closer analysis of MOGSA revealed that it does not sufficiently generalize to a wider set of test problems. Based on a detailed analysis of shortcomings of MOGSA, we propose a new algorithm, the Multi-Objective Landscape Explorer (MOLE). It is able to efficiently model and exploit LE sets in MMMOO problems. An implementation of MOLE is presented for the bi-objective case, and the practicality of the approach is shown in a benchmarking experiment on the Bi-Objective BBOB testbed.

Details about the publication

PublisherFieldsend, J. E.
Book titleProceedings of the Genetic and Evolutionary Computation Conference
Page range592-600
Publishing companyACM Press
Place of publicationNew York, NY, USA
StatusPublished
Release year2022
Language in which the publication is writtenEnglish
Conference2022 Genetic and Evolutionary Computation Conference, GECCO 2022, Boston, Massachusetts, United States
ISBN9781450392372
DOI10.1145/3512290.3528793
Link to the full texthttps://api.elsevier.com/content/abstract/scopus_id/85135240841
Keywordscontinuous optimization; local search; heuristics; multimodality; multi-objective optimization

Authors from the University of Münster

Grimme, Christian
Data Science: Statistics and Optimization (Statistik)
Research Group Computational Social Science and Systems Analysis (CSSSA)
Schäpermeier, Lennart Merlin
Research Group Computational Social Science and Systems Analysis (CSSSA)