International audienceBenchmarking aims to investigate the performance of one or several algorithms for a set of reference problems by empirical means. An important motivation for benchmarking is the generation of insight that can be leveraged for designing more efficient solvers, for selecting a best algorithm, and/or for choosing a suitable instantiation of a parametrized algorithm. An important component of benchmarking is its design of experiment (DoE), which comprises the selection of the problems, the algorithms, the computational budget, etc., but also the performance indicators by which the data is evaluated. The DoE very strongly depends on the question that the user aims to answer. Flexible benchmarking environments that can easil...
Abstract. Backbone variables have the same assignment in all solutions to a given constraint satisfa...
The development of algorithms solving computationally hard optimisation problems has a long history....
Benchmark experiments nowadays are the method of choice to evaluate learn-ing algorithms in most res...
When for a difficult real-world optimisation problem no good problem-specific algorithm is available...
We present a novel way to judge the performance of IDA* heuristics. With this measure of heuristic q...
Randomised search heuristics are used in practice to solve difficult problems where no good problem-...
Randomised search heuristics are used in practice to solve difficult problems where no good problem-...
A multitude of heuristic stochastic optimization algorithms have been described in literature to obt...
Heuristic algorithms are often difficult to analyse theoretically; this holds in particular for adva...
Surrogate algorithms such as Bayesian optimisation are especially designed for black-box optimisatio...
Many heuristic search methods have been derived by analogy from natural processes and applied to pra...
Classical heuristic search algorithms find the solution cost of a problem while finding the path fro...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
Benchmarking heuristic algorithms is vital to understand under which conditions and on what kind of ...
The known NP-hardness results imply that for many combinatorial optimization problems there are no e...
Abstract. Backbone variables have the same assignment in all solutions to a given constraint satisfa...
The development of algorithms solving computationally hard optimisation problems has a long history....
Benchmark experiments nowadays are the method of choice to evaluate learn-ing algorithms in most res...
When for a difficult real-world optimisation problem no good problem-specific algorithm is available...
We present a novel way to judge the performance of IDA* heuristics. With this measure of heuristic q...
Randomised search heuristics are used in practice to solve difficult problems where no good problem-...
Randomised search heuristics are used in practice to solve difficult problems where no good problem-...
A multitude of heuristic stochastic optimization algorithms have been described in literature to obt...
Heuristic algorithms are often difficult to analyse theoretically; this holds in particular for adva...
Surrogate algorithms such as Bayesian optimisation are especially designed for black-box optimisatio...
Many heuristic search methods have been derived by analogy from natural processes and applied to pra...
Classical heuristic search algorithms find the solution cost of a problem while finding the path fro...
Abstract. Machine learning can be utilized to build models that predict the runtime of search algori...
Benchmarking heuristic algorithms is vital to understand under which conditions and on what kind of ...
The known NP-hardness results imply that for many combinatorial optimization problems there are no e...
Abstract. Backbone variables have the same assignment in all solutions to a given constraint satisfa...
The development of algorithms solving computationally hard optimisation problems has a long history....
Benchmark experiments nowadays are the method of choice to evaluate learn-ing algorithms in most res...