AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing the structure of many constraint satisfaction problems also predict the cost to solve them, on average. We apply these observations as a heuristic to improve the performance of genetic algorithms for some constraint satisfaction problems. In particular, we use a simple cost measure to evaluate the likely solution difficulty of the different unsolved subproblems appearing in the population. This is used to determine which individuals contribute to subsequent generations and improves upon the traditional direct use of the underlying cost function. As a specific test case, we used the GENESIS genetic algorithm to search for the optimum of a class ...
International audienceWe present a general method of handling constraints in genetic optimization, b...
In the field of genetic and evolutionary algorithms (GEAs), a large amount of theory and empirical s...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
What makes a problem easy or hard for a genetic algorithm (GA)? This question has become increasingl...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
Abslracl-This paper proposes a framework for automati-cally evolving constraint satisfaction algorit...
International audienceWe present a general method of handling constraints in genetic optimization, b...
We investigate the variable performance of a genetic algorithm (GA) on randomly generated binary con...
International audienceWe present a general method of handling constraints in genetic optimization, b...
Existing methods to handle constraints in genetic algorithms (GA) are often computationally expensiv...
International audienceWe present a general method of handling constraints in genetic optimization, b...
In the field of genetic and evolutionary algorithms (GEAs), a large amount of theory and empirical s...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
What makes a problem easy or hard for a genetic algorithm (GA)? This question has become increasingl...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
The efficient choice of a preprocessing level can reduce the search time of a constraint solver to f...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
Abslracl-This paper proposes a framework for automati-cally evolving constraint satisfaction algorit...
International audienceWe present a general method of handling constraints in genetic optimization, b...
We investigate the variable performance of a genetic algorithm (GA) on randomly generated binary con...
International audienceWe present a general method of handling constraints in genetic optimization, b...
Existing methods to handle constraints in genetic algorithms (GA) are often computationally expensiv...
International audienceWe present a general method of handling constraints in genetic optimization, b...
In the field of genetic and evolutionary algorithms (GEAs), a large amount of theory and empirical s...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...