8 zoekresultaten voor “evolutionary algorithms” in de Publieke website
-
Multi-objective mixed-integer evolutionary algorithms for building spatial design
Multi-objective evolutionary computation aims to find high quality (Pareto optimal) solutions that represent the trade-off between multiple objectives.
-
Guiding evolutionary search towards innovative solutions
Promotors: Prof.dr. T.H.W. Bäck, Prof.dr. B. Sendhoff (Technische Universität Darmstadt)
-
From Benchmarking Optimization Heuristics to Dynamic Algorithm Configuration
For optimization problems, it is often unclear how to choose the most appropriate optimization algorithm. As such, rigorous benchmarking practices are critical to ensure we can gain as much insight into the strengths and weaknesses of these types of algorithms.
-
Benchmarking Discrete Optimization Heuristics
This thesis involves three topics: benchmarking discrete optimization algorithms, empirical analyses of evolutionary computation, and automatic algorithm configuration.
-
Ananta ShahaneWiskunde en Natuurwetenschappen
a.a.shahane@liacs.leidenuniv.nl | 071 5272727
-
Hybrid Quantum-Classical Metaheuristics for Automated Machine Learning Applications
This thesis investigates how quantum, quantum-inspired, and hybrid quantum-classical computation can enhance key points of the automated machine learning (AutoML) pipeline under the constraints of noisy intermediate-scale quantum (NISQ) devices.
-
Diederick VermettenWiskunde en Natuurwetenschappen
d.l.vermetten@liacs.leidenuniv.nl | 071 5272727
-
Prijs voor methode die nóg betere algoritmes kan maken
Ze ontwikkelt algoritmes die toonaangevende optimalisatietechnieken overtreffen en breed toepasbaar zijn. Het team van Niki van Stein krijgt hiervoor de GECCO Humies Award. ‘Met onze methode kunnen we voor diverse apps algoritmes maken en doorontwikkelen die beter zijn dan de huidige.’