2016
DOI: 10.1007/978-3-319-45823-6_46
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Towards Many-Objective Optimisation with Hyper-heuristics: Identifying Good Heuristics with Indicators

Abstract: Abstract. The use of hyper-heuristics is increasing in the multi-objective optimisation domain, and the next logical advance in such methods is to use them in the solution of many-objective problems. Such problems comprise four or more objectives and are known to present a significant challenge to standard dominance-based evolutionary algorithms. We incorporate three comparison operators as alternatives to dominance and investigate their potential to optimise many-objective problems with a hyper-heuristic from… Show more

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Cited by 6 publications
(2 citation statements)
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“…Her proposed approach controls and combines the strengths of three well-known bio-inspired multi-objective solvers (NSGA-II, SPEA2, and MOGA), which are adopted as her low-level heuristics. The indicatorbased multi-objective sequence-based hyper-heuristic (MOSSHH) algorithm proposed in [129] was the first attempt to use a hyper-heuristic in many-objective problems. The study compares three indicators (one based on average rank, the hypervolume and the favour relation) with Pareto dominance in many-objective problems.…”
Section: Multi-and Many-objective Optimizationmentioning
confidence: 99%
“…Her proposed approach controls and combines the strengths of three well-known bio-inspired multi-objective solvers (NSGA-II, SPEA2, and MOGA), which are adopted as her low-level heuristics. The indicatorbased multi-objective sequence-based hyper-heuristic (MOSSHH) algorithm proposed in [129] was the first attempt to use a hyper-heuristic in many-objective problems. The study compares three indicators (one based on average rank, the hypervolume and the favour relation) with Pareto dominance in many-objective problems.…”
Section: Multi-and Many-objective Optimizationmentioning
confidence: 99%
“…At each iteration, the child replaces the parent if the former dominates the second. However, in a further paper [167], this comparison rule was changed by strategies based on the hypervolume indicator [182], the favour relation [44] and the average rank [10]. Moreover, the hidden Markov model is updated if the child is added to the archive and if it was better than the parent.…”
Section: Hyper-heuristicsmentioning
confidence: 99%