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Combination of Classifiers using the Fuzzy Integral for Uncertainty Identification and Subject Specific Optimization Application to Brain-Computer Interface

机译:使用模糊积分的分类器组合在脑接口中使用模糊积分进行不确定识别和主题特定优化应用

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In this paper we propose a framework for combination of classifiers using fuzzy measures and integrals that aims at providing researchers and practitioners with a simple and structured approach to deal with two issues that often arise in many pattern recognition applications: (i) the need for an automatic and user-specific selection of the best performing classifier or, better, ensemble of classifiers, out of the available ones; (ii) the need for uncertainty identification which should result in an abstention rather than an unreliable decision. We evaluate the framework within the context of Brain-Computer Interface, a field in which abstention and inter-subject variability have a remarkable impact. Analysis of experimental data relative to five subjects shows that the proposed system is able to answer such needs.
机译:在本文中,我们提出了一种框架,用于使用模糊措施和积分的分类器组合,旨在为研究人员和从业者提供简单而结构化的方法来处理许多模式识别申请中经常出现的两个问题:(i)需要一个 自动和用户特定的选择最佳性能的分类器或更好的分类器的集合,从可用的分类器中; (ii)需要不确定性识别,这应该导致弃权而不是不可靠的决定。 我们评估脑电脑界面的背景下的框架,该领域的弃权和对象间变异具有显着影响。 相对于五个主题的实验数据分析表明,所提出的系统能够回答这些需求。

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