Abstract- Sequential parameter optimization is a heuristic that combines classical and modern statistical techniques to improve the performance of search algorithms. To demonstrate its flexibility, three scenarios are discussed: (1) no experience how to choose the parameter setting of an algorithm is available, (2) a comparison with other algorithms is needed, and (3) an optimization algorithm has to be applied effectively and efficiently to a complex real-world optimization problem. Although sequential parameter optimization relies on enhanced statistical techniques such as design and analysis of computer experiments, it can be performed algorithmically and requires basically the specification of the relevant algorithm’s parameters.
This work presents a novel method to identify the global optimum of a general class of single parame...
Despite the existence of a number of procedures for real-parameter optimization using evolutionary a...
The development of algorithms for tackling continuous optimization problems has been one of the most...
We provide a comprehensive, effective and very efficient methodology for the design and experimental...
Abstract. Obviously, it is not a good idea to apply an optimization algorithm with wrongly specified...
There is a strong need for sound statistical analysis of simulation and optimization algorithms. Bas...
Sequential Parameter Optimization is a model-based optimization methodology, which includes several ...
Evolutionary Algorithms (EAs) are powerful methods for solving optimization problems, inspired by na...
Deciding on the best performing parameter setting for evolutionary algorithms in a problem domain is...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
The sequential parameter optimization (spot) package for R (R De-velopment Core Team, 2008) is a too...
Abstract. State-of-the-art algorithms for hard computational problems often ex-pose many parameters ...
The horizontal axis represents the number of attempts in which an EqSet sequence is calculated on ce...
Industrial software often has many parameters that critically impact performance. Frequently, these ...
This thesis is about the tuning and simplification of black-box (direct-search, derivative-free) opt...
This work presents a novel method to identify the global optimum of a general class of single parame...
Despite the existence of a number of procedures for real-parameter optimization using evolutionary a...
The development of algorithms for tackling continuous optimization problems has been one of the most...
We provide a comprehensive, effective and very efficient methodology for the design and experimental...
Abstract. Obviously, it is not a good idea to apply an optimization algorithm with wrongly specified...
There is a strong need for sound statistical analysis of simulation and optimization algorithms. Bas...
Sequential Parameter Optimization is a model-based optimization methodology, which includes several ...
Evolutionary Algorithms (EAs) are powerful methods for solving optimization problems, inspired by na...
Deciding on the best performing parameter setting for evolutionary algorithms in a problem domain is...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
The sequential parameter optimization (spot) package for R (R De-velopment Core Team, 2008) is a too...
Abstract. State-of-the-art algorithms for hard computational problems often ex-pose many parameters ...
The horizontal axis represents the number of attempts in which an EqSet sequence is calculated on ce...
Industrial software often has many parameters that critically impact performance. Frequently, these ...
This thesis is about the tuning and simplification of black-box (direct-search, derivative-free) opt...
This work presents a novel method to identify the global optimum of a general class of single parame...
Despite the existence of a number of procedures for real-parameter optimization using evolutionary a...
The development of algorithms for tackling continuous optimization problems has been one of the most...