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AMPSO:一种用于最近邻分类的新粒子群方法。

AMPSO: a new particle swarm method for nearest neighborhood classification.

作者信息

Cervantes Alejandro, Galvan Inés María, Isasi Pedro

机构信息

Department of Computer Science, UniversityCarlos III of Madrid, 28911 Madrid, Spain.

出版信息

IEEE Trans Syst Man Cybern B Cybern. 2009 Oct;39(5):1082-91. doi: 10.1109/TSMCB.2008.2011816. Epub 2009 Mar 24.

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 first use the standard particle swarm optimizer (PSO) algorithm to find those prototypes. Second, we present a new algorithm, called adaptive Michigan PSO (AMPSO) in order to reduce the dimension of the search space and provide more flexibility than the former in this application. AMPSO is based on a different approach to particle swarms as each particle in the swarm represents a single prototype in the solution. The swarm does not converge to a single solution; instead, each particle is a local classifier, and the whole swarm is taken as the solution to the problem. It uses modified PSO equations with both particle competition and cooperation and a dynamic neighborhood. As an additional feature, in AMPSO, the number of prototypes represented in the swarm is able to adapt to the problem, increasing as needed the number of prototypes and classes of the prototypes that make the solution to the problem. We compared the results of the standard PSO and AMPSO in several benchmark problems from the University of California, Irvine, data sets and find that AMPSO always found a better solution than the standard PSO. We also found that it was able to improve the results of the Nearest Neighbor classifiers, and it is also competitive with some of the algorithms most commonly used for classification.

摘要

最近邻原型方法在许多模式分类问题上可能相当成功。在这些方法中,必须找到一组能够准确表示输入模式的原型。然后,分类器根据该集合中最近的原型来分配类别。在本文中,我们首先使用标准粒子群优化(PSO)算法来找到那些原型。其次,我们提出了一种新的算法,称为自适应密歇根PSO(AMPSO),以便减少搜索空间的维度,并在该应用中比前者提供更大的灵活性。AMPSO基于一种不同的粒子群方法,因为群体中的每个粒子代表解决方案中的一个单一原型。群体不会收敛到单个解决方案;相反,每个粒子都是一个局部分类器,整个群体被视为问题的解决方案。它使用具有粒子竞争与合作以及动态邻域的改进PSO方程。作为一个附加特性,在AMPSO中,群体中所代表的原型数量能够适应问题,根据需要增加原型数量以及构成问题解决方案的原型类别。我们在加利福尼亚大学欧文分校数据集的几个基准问题中比较了标准PSO和AMPSO的结果,发现AMPSO总是比标准PSO找到更好的解决方案。我们还发现它能够改进最近邻分类器的结果,并且与一些最常用于分类的算法相比也具有竞争力。

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