BBE: Basin-Based Evaluation of Multimodal Multi-objective Optimization Problems

Heins J, Rook J, Schäpermeier L, Kerschke P, Bossek J, Trautmann H

Research article in edited proceedings (conference) | Peer reviewed

Abstract

In multimodal multi-objective optimization (MMMOO), the focus is not solely on convergence in objective space, but rather also on explicitly ensuring diversity in decision space. We illustrate why commonly used diversity measures are not entirely appropriate for this task and propose a sophisticated basin-based evaluation (BBE) method. Also, BBE variants are developed, capturing the anytime behavior of algorithms. The set of BBE measures is tested by means of an algorithm configuration study. We show that these new measures also transfer properties of the well-established hypervolume (HV) indicator to the domain of MMMOO, thus also accounting for objective space convergence. Moreover, we advance MMMOO research by providing insights into the multimodal performance of the considered algorithms. Specifically, algorithms exploiting local structures are shown to outperform classical evolutionary multi-objective optimizers regarding the BBE variants and respective trade-off with HV.

Details about the publication

PublisherRudolph G, Kononova AV, Aguirre H, Kerschke P, Ochoa G, Tu{š}ar T
Book titleParallel Problem Solving from Nature -- PPSN XVII
Page range192-206
Publishing companySpringer International Publishing
Place of publicationCham
StatusPublished
Release year2022
Language in which the publication is writtenEnglish
ConferenceParallel Problem Solving from Nature -- PPSN XVII, Dortmund, Germany
ISBN978-3-031-14714-2
KeywordsMulti-objective optimization; Multimodality; Performance metric; Benchmarking; Continuous optimization; Anytime behavior

Authors from the University of Münster

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