Authors
Lee A Christie, Alexander EI Brownlee, John R Woodward
Publication date
2018/7/6
Book
Proceedings of the Genetic and Evolutionary Computation Conference Companion
Pages
209-210
Description
Benchmarks are important for comparing performance of optimisation algorithms, but we can select instances that present our algorithm favourably, and dismiss those on which our algorithm under-performs. Also related are automated design of algorithms, which use problem instances (benchmarks) to train an algorithm: careful choice of instances is needed for the algorithm to generalise.
We sweep parameter settings of differential evolution to applied to the BBOB benchmarks. Several benchmark functions are highly correlated. This may lead to the false conclusion that an algorithm performs well in general, when it performs poorly on a few key instances. These correlations vary with the number of evaluations.
Total citations
201920202021202220232024212311
Scholar articles
LA Christie, AEI Brownlee, JR Woodward - Proceedings of the Genetic and Evolutionary …, 2018