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An Improved Random Subspace Method and Its Application to EEG Signal Classification

机译:改进的随机子空间方法及其在脑电信号分类中的应用

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Ensemble learning is one of the principal current directions in the research of machine learning. In this paper, subspace ensembles for classification are explored which constitute an ensemble classifier system by manipulating different feature subspaces. Starting with the nature of ensemble efficacy, we probe into the microcosmic meaning of ensemble diversity, and propose to use region partitioning and region weighting to implement effective subspace ensembles. An improved random subspace method that integrates this mechanism is presented. Individual classifiers possessing eminent performance on a partitioned region reflected by high neighborhood accuracies, are deemed to contribute largely to this region, and are assigned large weights in determining the labels of instances in this area. The robustness and effectiveness of the proposed method is shown empirically with the base classifier of linear support vector machines on the classification problem of EEG signals.
机译:集成学习是机器学习研究的主要方向之一。本文研究了用于分类的子空间集成体,通过操纵不同的特征子空间来构成集成分类器系统。从整体效能的本质出发,我们探讨了整体多样性的微观含义,并提出使用区域划分和区域加权来实现有效的子空间整体。提出了一种集成了这种机制的改进的随机子空间方法。在高邻域精度反映的分区区域上具有卓越性能的各个分类器被认为对该区域有很大贡献,并且在确定该区域实例的标签时被赋予较大的权重。利用线性支持向量机的基本分类器,根据脑电信号的分类问题,经验地证明了该方法的鲁棒性和有效性。

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