Training classifiers can be seen as an optimization problem. With this view, we have devel-oped a method to train a type of nearest centroid classifier with PSO. Results showed an improvement on most of the datasets tested. Additionally, we have developed a method to utilize the developed classifier with datasets containing both numeric and categorical data by integrating the centroid algorithm with a decision tree. However, experiments found no significant improvement over the original decision tree method. Both the developed PSO centroid algorithm, and the previous PSO centroid algorithm are implemented on the GPU, with results showing at least one order of magnitude difference between speeds of the GPU and a ‘typical ’ sequential CPU imp...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
AbstractThe pattern recognition (PR) process uses a large number of labelled patterns and compute in...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...
Training classifiers can be seen as an optimization problem. With this view, we have developed a me...
This thesis deals with a population based stochastic optimization technique PSO (Particle Swarm Opti...
We examine the problem of optimizing classification tree evaluation for on-line and real-time appli-...
Abstract. We describe a method for implementing the evaluation and training of decision trees and fo...
Abstract—XCS – the eXtended Classifier System – combines an evolutionary algorithm with reinforcemen...
XCS - the extended Classifier System - combines an evolutionary algorithm with reinforcement learnin...
This work deals with the PSO technique (Particle Swarm Optimization), which is capable to solve comp...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
IEEE Swarm Intelligence Symposium. Honolulu, HI, 1-5 april 2007This paper presents an application of...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Recent developments in programmable, highly par-allel Graphics Processing Units (GPUs) have enabled ...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
AbstractThe pattern recognition (PR) process uses a large number of labelled patterns and compute in...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...
Training classifiers can be seen as an optimization problem. With this view, we have developed a me...
This thesis deals with a population based stochastic optimization technique PSO (Particle Swarm Opti...
We examine the problem of optimizing classification tree evaluation for on-line and real-time appli-...
Abstract. We describe a method for implementing the evaluation and training of decision trees and fo...
Abstract—XCS – the eXtended Classifier System – combines an evolutionary algorithm with reinforcemen...
XCS - the extended Classifier System - combines an evolutionary algorithm with reinforcement learnin...
This work deals with the PSO technique (Particle Swarm Optimization), which is capable to solve comp...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
IEEE Swarm Intelligence Symposium. Honolulu, HI, 1-5 april 2007This paper presents an application of...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
Neural networks stand out from artificial intelligence because they can complete challenging tasks, ...
Recent developments in programmable, highly par-allel Graphics Processing Units (GPUs) have enabled ...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
AbstractThe pattern recognition (PR) process uses a large number of labelled patterns and compute in...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...