We propose a grammar-based genetic programming framework that generates variable-selection heuristics for solving constraint satisfaction problems. This approach can be considered as a generation hyper-heuristic. A grammar to express heuristics is extracted from successful human-designed variable-selection heuristics. The search is performed on the derivation sequences of this grammar using a strongly typed genetic programming framework. The approach brings two innovations to grammar-based hyper-heuristics in this domain: the incorporation of if-then-else rules to the function set, and the implementation of overloaded functions capable of handling different input dimensionality. Moreover, the heuristic search space is explored using not onl...
Genetic programming refers to a class of genetic algorithms utilizing generic representation in the ...
Purpose: Hyper-heuristics are a class of high-level search techniques which operate on a search spac...
Abstract—Constraint satisfaction problems (CSP) are defined by a set of variables, where each variab...
We propose a grammar-based genetic programming framework that generates variable-selection heuristic...
Abslracl-This paper proposes a framework for automati-cally evolving constraint satisfaction algorit...
Several grammar-based genetic programming algorithms have been proposed in the literature to automat...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
A long-standing problem in Evolutionary Computation consists in how to choose an appropriate represe...
This thesis presents research that examines the effectiveness of several different program synthesis...
We develop algorithms capable of tackling robust black-box optimisation problems, where the number o...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...
The idea behind hyper-heuristics is to discover some com-bination of straightforward heuristics to s...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
This paper introduces a genetic local search algorithm for bi-nary constraint satisfaction problems....
Genetic programming refers to a class of genetic algorithms utilizing generic representation in the ...
Purpose: Hyper-heuristics are a class of high-level search techniques which operate on a search spac...
Abstract—Constraint satisfaction problems (CSP) are defined by a set of variables, where each variab...
We propose a grammar-based genetic programming framework that generates variable-selection heuristic...
Abslracl-This paper proposes a framework for automati-cally evolving constraint satisfaction algorit...
Several grammar-based genetic programming algorithms have been proposed in the literature to automat...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
A long-standing problem in Evolutionary Computation consists in how to choose an appropriate represe...
This thesis presents research that examines the effectiveness of several different program synthesis...
We develop algorithms capable of tackling robust black-box optimisation problems, where the number o...
Grammar-based Genetic Programming (GBGP) searches for a computer program in order to solve a given p...
Designing generic problem solvers that perform well across a diverse set of problems is a challengin...
The idea behind hyper-heuristics is to discover some com-bination of straightforward heuristics to s...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
This paper introduces a genetic local search algorithm for bi-nary constraint satisfaction problems....
Genetic programming refers to a class of genetic algorithms utilizing generic representation in the ...
Purpose: Hyper-heuristics are a class of high-level search techniques which operate on a search spac...
Abstract—Constraint satisfaction problems (CSP) are defined by a set of variables, where each variab...