What weights work for you? Adapting weights for any pareto front shape in decomposition-based evolutionary multiobjective optimisation

Research output: Contribution to journalArticlepeer-review

5 Citations (Scopus)
266 Downloads (Pure)

Abstract

The quality of solution sets generated by decomposition-based evolutionary multiobjective optimisation (EMO) algorithms depends heavily on the consistency between a given problem’s Pareto front shape and the specified weights’ distribution. A set of weights distributed uniformly in a simplex often lead to a set of well-distributed solutions on a Pareto front with a simplex-like shape, but may fail on other Pareto front shapes. It is an open problem on how to specify a set of appropriate weights without the information of the problem’s Pareto front beforehand. In this paper, we propose an approach to adapt weights during the evolutionary process (called AdaW). AdaW progressively seeks a suitable distribution of weights for the given problem by elaborating several key parts in weight adaptation — weight generation, weight addition, weight deletion, and weight update frequency. Experimental results have shown the effectiveness of the proposed approach. AdaW works well for Pareto fronts with very different shapes: 1) the simplex-like, 2) the inverted simplex-like, 3) the highly nonlinear, 4) the disconnect, 5) the degenerate, 6) the scaled, and 7) the highdimensional.
Original languageEnglish
Pages (from-to)227-253
Number of pages27
JournalEvolutionary Computation
Volume28
Issue number2
Early online date26 Feb 2020
DOIs
Publication statusPublished - Jul 2020

Keywords

  • Multi-objective optimisation
  • decomposition-based EMO
  • evolutionary algorithms
  • many-objective optimisation
  • weight adaptation

Fingerprint

Dive into the research topics of 'What weights work for you? Adapting weights for any pareto front shape in decomposition-based evolutionary multiobjective optimisation'. Together they form a unique fingerprint.

Cite this