4.7 Article

Preference incorporation into many-objective optimization: An Ant colony algorithm based on interval outranking

期刊

SWARM AND EVOLUTIONARY COMPUTATION
卷 69, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.swevo.2021.101024

关键词

Swarm intelligence; Many-objective optimization; Interval outranking; Vagueness in the DM's preferences

资金

  1. CONACYT [A1-S-11012, 3058, 1920]
  2. SEP-Cinvestav grant [4]
  3. Basque Government through the BERC 2018-2021 program by the Spanish Ministry of Science

向作者/读者索取更多资源

This paper proposes a novel multi-objective Ant Colony Optimization (ACO) optimizer that incorporates interval outranking to address problems with multiple objective functions and model the preferences of the Decision Maker (DM). By comparing it with other competitive optimizers, the results demonstrate that it better approximates the Region of Interest (RoI) that aligns with the DM's preferences compared to traditional methods that only approximate the Pareto frontier.
In this paper, we enriched Ant Colony Optimization (ACO) with interval outranking to develop a novel multi-objective ACO optimizer to approach problems with many objective functions. This proposal is suitable if the preferences of the Decision Maker (DM) can be modeled through outranking relations. The introduced algorithm (Interval Outranking-based ACO, IO-ACO) is the first ant-colony optimizer that embeds an outranking model to bear vagueness and ill-definition of the DM's preferences. This capacity is the most differentiating feature of IO-ACO because this issue is highly relevant in practice. IO-ACO biases the search towards the Region of Interest (RoI), the privileged zone of the Pareto frontier containing the solutions that better match the DM's preferences. Two widely studied benchmarks were utilized to measure the efficiency of IO-ACO, i.e., the DTLZ and WFG test suites. Accordingly, IO-ACO was compared with four competitive multi-objective optimizers: The Indicator-based Many-Objective ACO, the Multi-objective Evolutionary Algorithm Based on Decomposition, the Reference Vector-Guided Evolutionary Algorithm using Improved Growing Neural Gas, and the Indicator-based Multi-objective Evolutionary Algorithm with Reference Point Adaptation. The numerical results show that IO-ACO approximates the RoI better than leading metaheuristics based on approximating the Pareto frontier alone.

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