This paper presents a new approach to Particle Swarm Optimization, called Michigan Approach PSO (MPSO), and its applica- tion to continuous classi cation problems as a Nearest Prototype (NP) classi er. In Nearest Prototype classi ers, a collection of prototypes has to be found that accurately represents the input patterns. The classi er then assigns classes based on the nearest prototype in this collection. The MPSO algorithm is used to process training data to nd those prototypes. In the MPSO algorithm each particle in a swarm represents a single pro- totype in the solution and it uses modi ed movement rules with particle competition and cooperation that ensure particle diversity. The proposed method is tested both with arti cial problems ...
The concept of particle swarms originated from the simulation of the social behavior commonly observ...
A large number of problems can be cast as optimization problems in which the objective is to find a ...
Particle Swarm Optimization (PSO) is an evolutionary computation technique similar to genetic algori...
This paper presents a new approach to Particle Swarm Optimization, called Michigan Approach PSO (MPS...
IEEE Swarm Intelligence Symposium. Honolulu, HI, 1-5 april 2007This paper presents an application of...
Proceedings of: Second International Work-Conference on the Interplay Between Natural and Artificial...
The problem addressed in this paper concerns the prototype reduction for a nearest-neighbor classifi...
Nearest prototype methods can be quite successful on many pattern classification problems. In these ...
The nearest neighbor (NN) classifier suffers from high time complexity when classifying a test insta...
Abstract—The nearest neighbor (NN) classifier suffers from high time complexity when classifying a t...
Many optimization problems can be found in scientific and engineering fields. It is a challenge for ...
A semisupervised classification method based on particle swarm optimization (PSO) is proposed. The s...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...
The concept of particle swarms originated from the simulation of the social behavior commonly observ...
A large number of problems can be cast as optimization problems in which the objective is to find a ...
Particle Swarm Optimization (PSO) is an evolutionary computation technique similar to genetic algori...
This paper presents a new approach to Particle Swarm Optimization, called Michigan Approach PSO (MPS...
IEEE Swarm Intelligence Symposium. Honolulu, HI, 1-5 april 2007This paper presents an application of...
Proceedings of: Second International Work-Conference on the Interplay Between Natural and Artificial...
The problem addressed in this paper concerns the prototype reduction for a nearest-neighbor classifi...
Nearest prototype methods can be quite successful on many pattern classification problems. In these ...
The nearest neighbor (NN) classifier suffers from high time complexity when classifying a test insta...
Abstract—The nearest neighbor (NN) classifier suffers from high time complexity when classifying a t...
Many optimization problems can be found in scientific and engineering fields. It is a challenge for ...
A semisupervised classification method based on particle swarm optimization (PSO) is proposed. The s...
Purpose of this work is to show that the Particle Swarm Optimization Algorithm may improve the resul...
The concept of particle swarms originated from the simulation of the social behavior commonly observ...
A large number of problems can be cast as optimization problems in which the objective is to find a ...
Particle Swarm Optimization (PSO) is an evolutionary computation technique similar to genetic algori...