The efficient choice of a preprocessing level can reduce the search time of a constraint solver to find a solution to a constraint problem. Currently the parameters in constraint solver are often picked by hand by experts in the field. Genetic algorithms are a robust machine learning technology for problem optimization such as function optimization. Self-learning Genetic Algorithm are a strategy which suggests or predicts the suitable preprocessing method for large scale problems by learning from the same class of small scale problems. In this paper Self-learning Genetic Algorithms are used to create an automatic preprocessing selection mechanism for solving various constraint problems. The experiments in the paper are a proof of concept fo...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
In this section we discuss solving constraint satisfaction problems with evolutionary algorithms. We...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
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...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
This paper introduces a genetic local search algorithm for bi-nary constraint satisfaction problems....
Abslracl-This paper proposes a framework for automati-cally evolving constraint satisfaction algorit...
SIGLEAvailable from British Library Document Supply Centre- DSC:9109.3968(EU-DCS-CSM--139) / BLDSC -...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
In this section we discuss solving constraint satisfaction problems with evolutionary algorithms. We...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...
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...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
Currently the parameters in a constraint solver are often selected by hand by experts in the field; ...
AbstractRecent empirical and theoretical studies have shown that simple parameters characterizing th...
This paper introduces a genetic local search algorithm for bi-nary constraint satisfaction problems....
Abslracl-This paper proposes a framework for automati-cally evolving constraint satisfaction algorit...
SIGLEAvailable from British Library Document Supply Centre- DSC:9109.3968(EU-DCS-CSM--139) / BLDSC -...
Real-world optimisation problems are often subject to constraints that must be satisfied by the opti...
In this section we discuss solving constraint satisfaction problems with evolutionary algorithms. We...
Many real-world search and optimization problems involve inequality and/or equality constraints and ...