Peeking beyond peaks: Challenges and research potentials of continuous multimodal multi-objective optimization

Grimme C, Kerschke P, Aspar P, Trautmann H, Preuss M, Deutz AH, Wang H, Emmerich M

Research article (journal) | Peer reviewed

Abstract

Multi-objective (MO) optimization, i.e., the simultaneous optimization of multiple conflicting objectives, is gaining more and more attention in various research areas, such as evolutionary computation, machine learning (e.g., (hyper-)parameter optimization), or logistics (e.g., vehicle routing). Many works in this domain mention the structural problem property of multimodality as a challenge from two classical perspectives: (1) finding all globally optimal solution sets, and (2) avoiding to get trapped in local optima. Interestingly, these streams seem to transfer many traditional concepts of single-objective (SO) optimization into claims, assumptions, or even terminology regarding the MO domain, but mostly neglect the understanding of the structural properties as well as the algorithmic search behavior on a problem’s landscape. However, some recent works counteract this trend, by investigating the fundamentals and characteristics of MO problems using new visualization techniques and gaining surprising insights. Using these visual insights, this work proposes a step towards a unified terminology to capture multimodality and locality in a broader way than it is usually done. This enables us to investigate current research activities in multimodal continuous MO optimization and to highlight new implications and promising research directions for the design of benchmark suites, the discovery of MO landscape features, the development of new MO (or even SO) optimization algorithms, and performance indicators. For all these topics, we provide a review of ideas and methods but also an outlook on future challenges, research potential and perspectives that result from recent developments.

Details about the publication

JournalComputers and Operations Research
Volume136
StatusPublished
Release year2021
Language in which the publication is writtenEnglish
DOI10.1016/j.cor.2021.105489
Link to the full texthttps://www.sciencedirect.com/science/article/pii/S0305054821002367
KeywordsMultimodal optimization; Multi-objective continuous optimization; Landscape analysis; Visualization; Benchmarking; Theory; Algorithms

Authors from the University of Münster

Aspar, Pelin
Data Science: Statistics and Optimization (Statistik)
Grimme, Christian
Data Science: Statistics and Optimization (Statistik)
Research Group Computational Social Science and Systems Analysis (CSSSA)
Trautmann, Heike
Data Science: Statistics and Optimization (Statistik)