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Please use this identifier to cite or link to this item:
http://hdl.handle.net/10016/3986
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| Title: | An adaptive Michigan approach PSO for nearest prototype classification |
| Author(s): | Cervantes, Alejandro Galván, Inés M. Isasi, Pedro |
| Publisher: | Springer |
| Issued date: | 2007 |
| Citation: | Nature inspired problem-solving methods in knowledge engineering. Berlin: Springer, 2007, p. 287-296 (Lecture Notes in Computer Science; 4528) |
| URI: | http://hdl.handle.net/10016/3986 |
| ISBN: | 978-3-540-73054-5 |
| ISSN: | 1611-3349 (Online) |
| DOI: | http://dx.doi.org/10.1007/978-3-540-73055-2_31 |
| Description: | Proceedings of: Second International Work-Conference on the Interplay Between Natural and Artificial Computation, IWINAC 2007, La Manga del Mar Menor, Spain, June 18-21, 2007. |
| Abstract: | Nearest Prototype methods can be quite successful on many pattern classification problems. In these methods, a collection of prototypes has to be found that accurately represents the input patterns. The classifier then assigns classes based on the nearest prototype in this collection. In this paper we develop a new algorithm (called AMPSO), based on the Particle Swarm Optimization (PSO) algorithm, that can be used to find those prototypes. Each particle in a swarm represents a single prototype in the solution; the swarm evolves using modified PSO equations with both particle competition and cooperation. Experimentation includes an artificial problem and six common application problems from the UCI data sets. The results show that the AMPSO algorithm is able to find solutions with a reduced number of prototypes that classify data with comparable or better accuracy than the 1-NN classifier. The algorithm can also be compared or improves the results of many classical algorithms in each of those problems; and the results show that AMPSO also performs significantly better than any tested algorithm in one of the problems. |
| Sponsor: | This article has been financed by the Spanish founded research MEC project OPLINK::UC3M, Ref: TIN2005-08818-C04-02 and CAM project UC3M-TEC-05-029. |
| Serie / Nº.: | Lectures Notes on Computer Science Volume 4528/2007 |
| Publisher version: | http://dx.doi.org/10.1007/978-3-540-73055-2_31 |
| Subject: | Classification Data Mining Nearest Neighbor Particle Swarm Swarm Intelligence |
| Rights: | © Springer |
| Appears in Collections: | DI - GCERN - Capítulos de Monografías DI - GCERN - Comunicaciones en Congresos y otros eventos
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