International audienceExisting studies in black-box optimization for machine learning suffer from low generalizability, caused by a typically selective choice of problem instances used for training and testing different optimization algorithms. Among other issues, this practice promotes overfitting and poor-performing user guidelines. To address this shortcoming, we propose in this work a benchmark suite, OptimSuite, which covers a broad range of black-box optimization problems, ranging from academic benchmarks to real-world applications, from discrete over numerical to mixed-integer problems, from small to very large-scale problems, from noisy over dynamic to static problems, etc. We demonstrate the advantages of such a broad collection by...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
We present methods to answer two basic questions that arise when benchmarking optimization algorithm...
This paper presents results of the BBOB-2009 benchmark-ing of 31 search algorithms on 24 noiseless f...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Abell T, Malitsky Y, Tierney K. Features for Exploiting Black-Box Optimization Problem Structure. In...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
International audienceNumerical black-box optimization problems occur frequently in engineering desi...
When optimizing black-box functions, little information is available to assist the user in selecting...
Optimization is omnipresent in our world. Its numerous applications spread from industrial cases, su...
submitted to GECCO 2019International audienceWe introduce two suites of mixed-integer benchmark prob...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...
Black box search algorithms (BBSAs) vary widely in their effectiveness at solving particular classes...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
We present methods to answer two basic questions that arise when benchmarking optimization algorithm...
This paper presents results of the BBOB-2009 benchmark-ing of 31 search algorithms on 24 noiseless f...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Abell T, Malitsky Y, Tierney K. Features for Exploiting Black-Box Optimization Problem Structure. In...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
International audienceNumerical black-box optimization problems occur frequently in engineering desi...
When optimizing black-box functions, little information is available to assist the user in selecting...
Optimization is omnipresent in our world. Its numerous applications spread from industrial cases, su...
submitted to GECCO 2019International audienceWe introduce two suites of mixed-integer benchmark prob...
Black-box optimization algorithms optimize a tness function f without knowl-edge of the specic param...
Black box search algorithms (BBSAs) vary widely in their effectiveness at solving particular classes...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
We present methods to answer two basic questions that arise when benchmarking optimization algorithm...
This paper presents results of the BBOB-2009 benchmark-ing of 31 search algorithms on 24 noiseless f...