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Position update mechanisms for enhanced particle swarm classification

机译:用于增强粒子群分类的位置更新机制

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This work addresses position update mechanisms that may increase the accuracy of particle swarm classification (PSC), a derivative of Particle Swarm Optimization (PSO) fit for classification problems. The main idea in PSC is to retrieve the best particle positions corresponding to the centroids of classes. We present two variants of the PSC algorithm with different position update mechanisms. In particular, we show how the combination of particle confinement to the search space and a biologically inspired wind dispersion mechanism for them improves the classification accuracy of the basic PSC algorithm. An experimental set up was realized and tested on five benchmark databases, leading to better recognition accuracies than those obtained with the previous PSC algorithm.
机译:这项工作解决了可能会增加粒子群分类(PSC)的准确性的位置更新机制,粒子群优化(PSO)的派生适用于分类问题。 PSC中的主要思想是检索与类的质心相对应的最佳粒子位置。我们介绍了具有不同位置更新机制的PSC算法的两个变体。尤其是,我们展示了如何将粒子限制在搜索空间中以及结合生物学启发的风散布机制如何提高基本PSC算法的分类精度。实验设置得以实现,并在五个基准数据库上进行了测试,与以前的PSC算法相比,其识别精度更高。

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