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MOQPSO: A new quantum-behaved particle swarm optimization for nearest neighborhood classification

机译:Moqpso:最近的邻域分类的新量子表现粒子群优化

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As a kind of “lazy” learning method, nearest prototype has been successfully used in many pattern classification problems. In these methods, the main idea is that a collection of prototypes has to be found which precisely represents the input patterns and then the classifier assigns class labels based on the nearest prototype in the collection. In this paper, the quantum-behaved particle swarm optimization (QPSO) is first employed to find effective prototypes, and a new algorithm, called the multiple collapse-orthogonal crossover QPSO (MOQPSO) is presented in order to reduce the number of necessary prototypes, speed up the convergence and improve the classification result. In order to evaluate the performance of the new method, we compared the results of PSO, QPSO, and MOQPSO. Furthermore, it is also competitive with the classical SVM classifier and traditional nearest neighbor classifier. Some typical UCI datasets are used as test instances.
机译:作为一种“懒惰”学习方法,最近的原型已经成功地用于许多模式分类问题。在这些方法中,主要思想是必须找到原型的集合,这精确地表示输入模式,然后分类器基于集合中的最近的原型分配类标签。在本文中,首先使用量子表现粒子群优化(QPSO)来找到有效的原型,并提出了一种称为多个折叠正交交叉QPSO(MoQPSO)的新算法,以减少必要原型的数量,加快收敛并提高分类结果。为了评估新方法的性能,我们比较了PSO,QPSO和MoQPSO的结果。此外,它也与经典SVM分类器和传统的最近邻分类有竞争力。一些典型的UCI数据集用作测试实例。

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