One of the major problems related to Classifier Systems is the loss of rules. This loss is caused by the Genetic Algorithm being applied on the entire population of rules jointly. Obviously, the genetic operators discriminate rules by the strength value, such that evolution favors the generation of the stronger rules. When the learning process presents individual cases and allows the system to learn gradually from these cases, each learning interval with a set of individual cases can lead the strength to be distributed in favor of a given type of rules that would, in turn, be favored by the Genetic Algorithm. Basically, the idea is to divide rules into groups such that they are forced to remain in the system. This contribution is a method o...
This article proposes a method for achieving an appropriate balance between the parameters of suppor...
Abstract—The classification problem can be addressed by numerous techniques and algorithms which bel...
Rules are an accepted means of representing knowledge for virtually every domain. Traditional machin...
One of the major problems related to Classifier Systems is the loss of rules. This loss is caused by...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.One of the major problems relate...
Abstract- One of the major problems related to Classifier Systems is the loss of rules. This loss is...
IEEE International Conference on Systems, Man, and Cybernetics. Tokyo, 12-15 October 1999.The object...
Initial experiments with a genetic based encoding schema are presented as a potentially powerful too...
Classifier systems are massively parallel, message-passing, rule-based systems that learn through cr...
This thesis focuses on improving the Accuracy-based Learning Classifier System (XCS), a Machine Lear...
A qualidade das hipóteses induzidas pelos atuais sistemas de aprendizado de máquina supervisionado d...
This paper describes two classifier systems that learn. These are rule-based systems that use geneti...
Classifier systems are currently in vogue as a way of using genetic algorithms to demonstrate machin...
The grammars of natural languages may be learned by using genetic algorithms that reproduce and muta...
This thesis proposes a new representation for genetic algorithms, based on the idea of a genotype to...
This article proposes a method for achieving an appropriate balance between the parameters of suppor...
Abstract—The classification problem can be addressed by numerous techniques and algorithms which bel...
Rules are an accepted means of representing knowledge for virtually every domain. Traditional machin...
One of the major problems related to Classifier Systems is the loss of rules. This loss is caused by...
Congress on Evolutionary Computation. Washington, DC, 6-9 July 1999.One of the major problems relate...
Abstract- One of the major problems related to Classifier Systems is the loss of rules. This loss is...
IEEE International Conference on Systems, Man, and Cybernetics. Tokyo, 12-15 October 1999.The object...
Initial experiments with a genetic based encoding schema are presented as a potentially powerful too...
Classifier systems are massively parallel, message-passing, rule-based systems that learn through cr...
This thesis focuses on improving the Accuracy-based Learning Classifier System (XCS), a Machine Lear...
A qualidade das hipóteses induzidas pelos atuais sistemas de aprendizado de máquina supervisionado d...
This paper describes two classifier systems that learn. These are rule-based systems that use geneti...
Classifier systems are currently in vogue as a way of using genetic algorithms to demonstrate machin...
The grammars of natural languages may be learned by using genetic algorithms that reproduce and muta...
This thesis proposes a new representation for genetic algorithms, based on the idea of a genotype to...
This article proposes a method for achieving an appropriate balance between the parameters of suppor...
Abstract—The classification problem can be addressed by numerous techniques and algorithms which bel...
Rules are an accepted means of representing knowledge for virtually every domain. Traditional machin...