Several grammar-based genetic programming algorithms have been proposed in the literature to automatically generate heuristics for hard optimization problems. These approaches specify the algorithmic building blocks and the way in which they can be combined in a grammar; the best heuristic for the problem being tackled is found by an evolutionary algorithm that searches in the algorithm design space defined by the grammar. In this work, we propose a novel representation of the grammar by a sequence of categorical, integer, and real-valued parameters. We then use a tool for automatic algorithm configuration to search for the best algorithm for the problem at hand. Our experimental evaluation on the one-dimensional bin packing problem and the...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...
Abstract. The ability of Genetic Programming to scale to problems of increasing difficulty operates ...
Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representati...
Abstract We propose a grammar-based genetic programming framework that generates variable-selection ...
We develop algorithms capable of tackling robust black-box optimisation problems, where the number o...
We have previously used grammars as a formalism to structure a GA's search for program called s...
This thesis proposes a new representation for genetic algorithms, based on the idea of a genotype to...
Many stochastic local search (SLS) methods rely on the manipulation of single solutions at each of t...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
A long-standing problem in Evolutionary Computation consists in how to choose an appropriate represe...
Combinatorial optimization problems can be found in many aspects ofmanufacturing, computer science, ...
International audienceMany stochastic local search (SLS) methods rely on the manipulation of single ...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
The fully revised version of this article occurs inFoundations of Genetic Algortihms IV
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...
Abstract. The ability of Genetic Programming to scale to problems of increasing difficulty operates ...
Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representati...
Abstract We propose a grammar-based genetic programming framework that generates variable-selection ...
We develop algorithms capable of tackling robust black-box optimisation problems, where the number o...
We have previously used grammars as a formalism to structure a GA's search for program called s...
This thesis proposes a new representation for genetic algorithms, based on the idea of a genotype to...
Many stochastic local search (SLS) methods rely on the manipulation of single solutions at each of t...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
A long-standing problem in Evolutionary Computation consists in how to choose an appropriate represe...
Combinatorial optimization problems can be found in many aspects ofmanufacturing, computer science, ...
International audienceMany stochastic local search (SLS) methods rely on the manipulation of single ...
The application of Genetic Programming to the discovery of empirical laws is often impaired by the h...
The fully revised version of this article occurs inFoundations of Genetic Algortihms IV
Grammar-Based Genetic Programming (GBGP) improves the search performance of Genetic Programming (GP)...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...
Abstract. The ability of Genetic Programming to scale to problems of increasing difficulty operates ...
Abstract. Genetic Programming (GP) provides evolutionary methods for problems with tree representati...