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The averaged Hausdorff distances in multi-objective optimization: A review

  • Universidad Javeriana
  • Av. Instituto Politécnico Nacional No. 2508
  • Universidad Autónoma Metropolitana

Research output: Contribution to journalReview articlepeer-review

34 Scopus citations

Abstract

A brief but comprehensive review of the averaged Hausdorff distances that have recently been introduced as quality indicators in multi-objective optimization problems (MOPs) is presented. First, we introduce all the necessary preliminaries, definitions, and known properties of these distances in order to provide a stat-of-the-art overview of their behavior from a theoretical point of view. The presentation treats separately the definitions of the (p, q)-distances GDp,q, IGDp,q, and Δp,q for finite sets and their generalization for arbitrary measurable sets that covers as an important example the case of continuous sets. Among the presented results, we highlight the rigorous consideration of metric properties of these definitions, including a proof of the triangle inequality for distances between disjoint subsets when p, q ≥ 1, and the study of the behavior of associated indicators with respect to the notion of compliance to Pareto optimality. Illustration of these results in particular situations are also provided. Finally, we discuss a collection of examples and numerical results obtained for the discrete and continuous incarnations of these distances that allow for an evaluation of their usefulness in concrete situations and for some interesting conclusions at the end, justifying their use and further study.

Original languageEnglish
Article number894
JournalMathematics
Volume7
Issue number10
DOIs
StatePublished - 01 Oct 2019

Keywords

  • Averaged Hausdorff distance
  • Evolutionary multi-objective optimization
  • Pareto compliance
  • Performance indicator
  • Power means

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