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首页> 外文期刊>Journal of information and computational science >Batch Mode Active Learning Algorithm Combining with Self-training for Multiclass Brain-computer Interfaces
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Batch Mode Active Learning Algorithm Combining with Self-training for Multiclass Brain-computer Interfaces

机译:批处理模式主动学习算法与自训练相结合的多类脑​​机接口

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摘要

In this paper, an batch mode active learning algorithm combining with the benefits of self-training for solving the multiclass Brain-computer Interface (BCI) problem, which initially only needs a small set of labeled samples to train classifiers. The algorithm applied active learning to select the most informative samples and self-training to select the most high confidence samples, respectively, according to the proposed novel uncertainty criterion and confidence criterion for boosting the performance of the classifier. Experiments on the Dataset 2a of the BCI Competition IV, which demonstrate our method achieves more improvement than Active Learning (AL) and Random Sampling (RS) when the same amount of human effort is sacrificed.
机译:本文提出了一种批处理模式的主动学习算法,结合了自我训练的优势,可以解决多类脑机接口(BCI)问题,该问题最初只需要一小组标记的样本即可训练分类器。该算法根据提出的新颖的不确定性准则和置信准则,分别采用主动学习来选择信息量最大的样本和进行自训练来选择最高置信度的样本,以提高分类器的性能。在BCI竞赛IV的数据集2a上进行的实验表明,当牺牲相同的人力时,我们的方法比主动学习(AL)和随机采样(RS)取得了更大的进步。

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