Extracting the rules from spatio-temporal patterns generated by the evolution of Cellular Automata (CA) usually requires "a priori" information about the observed system, but in many applications little information will be known about the pattern. This paper introduces a new neighbourhood detection algorithm which can determine the range of the neighbourhood without any knowledge of the system by introducing a criterion based on Mutual Information (MI) and an indication of over-estimation. A coarse-to-fine identification routine is then proposed to determine the CA rule from the observed pattern. Examples, including data from a real experiment, are employed to evaluate the new algorithm
This paper proposes a new method for geographical simulation by applying data mining techniques to c...
A multiobjective genetic algorithm (GA) is introduced to identify both the neighborhood and the rule...
In this article is investigate possibility of evolutionary algorithms use on one-dimensional cellula...
Using GA's to search for CA rules from spatio-temporal patterns produced in CA evolution is usually ...
A novel approach to the determination of the neighbourhood and the identification of spatio-temporal...
Extracting the rules from spatio-temporal patterns generated by the evolution of Cellular Automata (...
The identification of Probabilistic Cellular Automata (PCA) is studied using a new two stage neighbo...
A new neighbourhood selection method is presented for both deterministic and probabilistic cellular ...
Extracting the rules from spatio-temporal patterns generated by the evolution of cellular automata (...
Cellular automata (CA) with given evolution rules have been widely investigated, but the inverse pro...
Using genetic algorithms (GAs) to search for cellular automation (CA) rules from spatio-temporal pat...
The identification of probabilistic cellular automata (PCA) is studied using a new two stage neighbo...
This paper presents a new method to discover knowledge for geographical cellular automata (CA) by us...
Abstract. In this paper a method is proposed which uses data mining techniques based on rough sets t...
We propose a definition of cellular automaton in which each cell can change its neighbourhood during...
This paper proposes a new method for geographical simulation by applying data mining techniques to c...
A multiobjective genetic algorithm (GA) is introduced to identify both the neighborhood and the rule...
In this article is investigate possibility of evolutionary algorithms use on one-dimensional cellula...
Using GA's to search for CA rules from spatio-temporal patterns produced in CA evolution is usually ...
A novel approach to the determination of the neighbourhood and the identification of spatio-temporal...
Extracting the rules from spatio-temporal patterns generated by the evolution of Cellular Automata (...
The identification of Probabilistic Cellular Automata (PCA) is studied using a new two stage neighbo...
A new neighbourhood selection method is presented for both deterministic and probabilistic cellular ...
Extracting the rules from spatio-temporal patterns generated by the evolution of cellular automata (...
Cellular automata (CA) with given evolution rules have been widely investigated, but the inverse pro...
Using genetic algorithms (GAs) to search for cellular automation (CA) rules from spatio-temporal pat...
The identification of probabilistic cellular automata (PCA) is studied using a new two stage neighbo...
This paper presents a new method to discover knowledge for geographical cellular automata (CA) by us...
Abstract. In this paper a method is proposed which uses data mining techniques based on rough sets t...
We propose a definition of cellular automaton in which each cell can change its neighbourhood during...
This paper proposes a new method for geographical simulation by applying data mining techniques to c...
A multiobjective genetic algorithm (GA) is introduced to identify both the neighborhood and the rule...
In this article is investigate possibility of evolutionary algorithms use on one-dimensional cellula...