English

Real-valued Evolutionary Multi-modal Multi-objective Optimization by Hill-Valley Clustering

Neural and Evolutionary Computing 2020-10-29 v1 Optimization and Control

Abstract

In model-based evolutionary algorithms (EAs), the underlying search distribution is adapted to the problem at hand, for example based on dependencies between decision variables. Hill-valley clustering is an adaptive niching method in which a set of solutions is clustered such that each cluster corresponds to a single mode in the fitness landscape. This can be used to adapt the search distribution of an EA to the number of modes, exploring each mode separately. Especially in a black-box setting, where the number of modes is a priori unknown, an adaptive approach is essential for good performance. In this work, we introduce multi-objective hill-valley clustering and combine it with MAMaLGaM, a multi-objective EA, into the multi-objective hill-valley EA (MO-HillVallEA). We empirically show that MO-HillVallEA outperforms MAMaLGaM and other well-known multi-objective optimization algorithms on a set of benchmark functions. Furthermore, and perhaps most important, we show that MO-HillVallEA is capable of obtaining and maintaining multiple approximation sets simultaneously over time.

Keywords

Cite

@article{arxiv.2010.14998,
  title  = {Real-valued Evolutionary Multi-modal Multi-objective Optimization by Hill-Valley Clustering},
  author = {S. C. Maree and T. Alderliesten and P. A. N. Bosman},
  journal= {arXiv preprint arXiv:2010.14998},
  year   = {2020}
}
R2 v1 2026-06-23T19:43:02.578Z