International audienceAlgorithm Configuration is still an intricate problem especially in the continuous black box optimization domain. This paper empirically investigates the relationship between continuous problem features (measuring different problem characteristics) and the best parameter configuration of a given stochastic algorithm over a bench of test functions — namely here, the original version of Differential Evolution over the BBOB test bench. This is achieved by learning an empirical performance model from the problem features and the algorithm parameters. This performance model can then be used to compute an empirical optimal parameter configuration from features values. The results show that reasonable performance models can i...
Algorithm designers are regularly faced with the tedious task of finding suitable default values fo...
Benchmarks are important to demonstrate the utility of optimisation algorithms, but there is controv...
International audienceIn this paper, the performances of the quasi-Newton BFGS algorithm, the NEWUOA...
International audienceAlgorithm Configuration is still an intricate problem especially in the contin...
This PhD thesis focuses on the automated algorithm configuration that aims at finding the best param...
Benchmark sets and landscape features are used to test algorithms and to train models to perform alg...
International audiencePer Instance Algorithm Configuration (PIAC) relies on features that describe p...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
International audienceA possible approach to Algorithm Selection and Configuration for continuous bl...
Algorithms for solving hard optimization problems usually have a number of parameters that greatly i...
Continuous optimization is never easy: the exact solution is always a luxury demand and ...
Benchmarks are important for comparing performance of optimisation algorithms, but we can select ins...
Heutzutage sind zahlreiche Abläufe strukturiert, wodurch sich diese zunächst modellieren und anschli...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Un problème d'optimisation continue peut se définir ainsi : étant donné une fonction objectif de R à...
Algorithm designers are regularly faced with the tedious task of finding suitable default values fo...
Benchmarks are important to demonstrate the utility of optimisation algorithms, but there is controv...
International audienceIn this paper, the performances of the quasi-Newton BFGS algorithm, the NEWUOA...
International audienceAlgorithm Configuration is still an intricate problem especially in the contin...
This PhD thesis focuses on the automated algorithm configuration that aims at finding the best param...
Benchmark sets and landscape features are used to test algorithms and to train models to perform alg...
International audiencePer Instance Algorithm Configuration (PIAC) relies on features that describe p...
This is the author accepted manuscript. The final version is available from IEEE via the DOI in this...
International audienceA possible approach to Algorithm Selection and Configuration for continuous bl...
Algorithms for solving hard optimization problems usually have a number of parameters that greatly i...
Continuous optimization is never easy: the exact solution is always a luxury demand and ...
Benchmarks are important for comparing performance of optimisation algorithms, but we can select ins...
Heutzutage sind zahlreiche Abläufe strukturiert, wodurch sich diese zunächst modellieren und anschli...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Un problème d'optimisation continue peut se définir ainsi : étant donné une fonction objectif de R à...
Algorithm designers are regularly faced with the tedious task of finding suitable default values fo...
Benchmarks are important to demonstrate the utility of optimisation algorithms, but there is controv...
International audienceIn this paper, the performances of the quasi-Newton BFGS algorithm, the NEWUOA...