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English: Performance landscape showing how a simple Particle Swarm Optimization (PSO) variant performs in aggregate on several benchmark problems when varying two PSO parameters. Lower meta-fitness values means better PSO performance. Such a performance landscape is very time-consuming to compute, especially for optimizers with several behavioural parameters, but it can be searched efficiently using the simple meta-optimization approach by Pedersen implemented in SwarmOps to uncover PSO parameters with good performance. Good choices would here seem to be in the region and , and the region and
Deutsch: Gütefunktion, die zeigt wie gut eine einfache Variante der Partikelschwarmoptimierung (PSO) verschiedene Testfunktionen unter Veränderung zweier Parameter insgesamt bearbeitet. Ein kleinerer Meta-Fitness-Wert bedeutet eine bessere Performance der PSO. Eine gute Parameterwahl läge hier in der Region und , und in der Region und
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Pedersen, M.E.H., Tuning & Simplifying Heuristical Optimization, PhD Thesis, 2010, University of Southampton, School of Engineering Sciences, Computational Engineering and Design Group.
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{{Information |Description={{en|1=Performance landscape showing how a simple Particle Swarm Optimization (PSO) variant performs in aggregate on several benchmark problems when varying two PSO parameters. Lower meta-fitness values means better PSO performa