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Enhanced Z-LDA for Small Sample Size Training in Brain-Computer Interface Systems

机译:增强型Z-LDA用于脑机接口系统中的小样本量训练

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摘要

Background. Usually the training set of online brain-computer interface (BCI) experiment is small. For the small training set, it lacks enough information to deeply train the classifier, resulting in the poor classification performance during online testing. Methods. In this paper, on the basis of Z-LDA, we further calculate the classification probability of Z-LDA and then use it to select the reliable samples from the testing set to enlarge the training set, aiming to mine the additional information from testing set to adjust the biased classification boundary obtained from the small training set. The proposed approach is an extension of previous Z-LDA and is named enhanced Z-LDA (EZ-LDA). Results. We evaluated the classification performance of LDA, Z-LDA, and EZ-LDA on simulation and real BCI datasets with different sizes of training samples, and classification results showed EZ-LDA achieved the best classification performance. Conclusions. EZ-LDA is promising to deal with the small sample size training problem usually existing in online BCI system.
机译:背景。通常,在线脑机接口(BCI)实验的训练集很小。对于小的训练集,它缺乏足够的信息来深度训练分类器,从而导致在线测试期间的分类性能较差。方法。本文在Z-LDA的基础上,进一步计算了Z-LDA的分类概率,然后使用它从测试集中选择可靠的样本以扩大训练集,旨在挖掘测试集中的其他信息调整从小训练集获得的有偏分类边界。所提出的方法是对先前Z-LDA的扩展,并被称为增强型Z-LDA(EZ-LDA)。结果。我们在不同训练样本大小的模拟和真实BCI数据集上评估了LDA,Z-LDA和EZ-LDA的分类性能,分类结果表明EZ-LDA取得了最佳分类性能。结论。 EZ-LDA有望解决在线BCI系统中通常存在的小样本培训问题。

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