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Particle swarm optimization for ensembling generation for evidential k-nearest-neighbour classifier

机译:证据群最优化用于证据生成的k近邻分类器

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摘要

The problem addressed in this paper concerns the ensembling generation for evidential k-nearest-neighbour classifier. An efficient method based on particle swarm optimization (PSO) is here proposed. We improve the performance of the evidential k-nearest-neighbour (EkNN) classifier using a random subspace based ensembling method. Given a set of random subspace EkNN classifier, a PSO is used for obtaining the best parameters of the set of evidential k-nearest-neighbour classifiers, finally these classifiers are combined by the “vote rule”. The performance improvement with respect to the state-of-the-art approaches is validated through experiments with several benchmark datasets.
机译:本文解决的问题涉及证据k近邻分类器的集合生成。本文提出了一种基于粒子群算法的有效方法。我们使用基于随机子空间的集成方法来改进证据k最近邻(EkNN)分类器的性能。给定一组随机子空间EkNN分类器,将PSO用于获得证据k近邻分类器集的最佳参数,最后将这些分类器通过“投票规则”进行组合。通过使用多个基准数据集进行的实验,验证了有关最新技术的性能改进。

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