Refine
Year of publication
Document Type
- Report (17)
- Working Paper (16)
- Article (8)
- Preprint (5)
- Book (4)
- Conference Proceeding (1)
- Doctoral Thesis (1)
Language
- English (52) (remove)
Has Fulltext
- yes (52)
Keywords
- Optimierung (15)
- Optimization (13)
- Benchmarking (5)
- Modellierung (5)
- Simulation (5)
- Globale Optimierung (4)
- Soft Computing (4)
- Disaster Risk Reduction (3)
- Evolutionärer Algorithmus (3)
- Kriging (3)
Institute
- Fakultät für Informatik und Ingenieurwissenschaften (F10) (26)
- Fakultät 10 / Institut für Informatik (11)
- Fakultät 09 / Institut für Rettungsingenieurwesen und Gefahrenabwehr (4)
- Fakultät 02 / Köln International School of Design (2)
- Fakultät 04 / Institut für Versicherungswesen (2)
- Fakultät 10 / Institut für Data Science, Engineering, and Analytics (2)
- Fakultät 08 / Institut für Fahrzeugtechnik (1)
- Institut für Technologie und Ressourcenmanagement in den Tropen und Subtropen (ITT) (1)
The performance of optimization algorithms relies crucially on their parameterizations. Finding good parameter settings is called algorithm tuning. Using
a simple simulated annealing algorithm, we will demonstrate how optimization algorithms can be tuned using the Sequential Parameter Optimization Toolbox (SPOT). SPOT provides several tools for automated and interactive tuning. The underlying concepts of the SPOT approach are explained. This includes key techniques such as exploratory fitness landscape analysis and response surface methodology. Many examples illustrate
how SPOT can be used for understanding the performance of algorithms and gaining insight into algorithm behavior. Furthermore, we demonstrate how SPOT can be used as an optimizer and how a sophisticated ensemble approach is able to combine several meta models via stacking.