平均收缩通过利用额外的标签信息来改进ERP信号的分类

J. Höhne, B. Blankertz, K. Müller, Daniel Bartz
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引用次数: 8

摘要

线性判别分析(LDA)是脑机接口(BCI)框架中最常用的单次试验数据分类方法。LDA的流行源于它的鲁棒性、简单性和高准确率。然而,标准的LDA方法无法利用子标签信息(如刺激同一性),这可以从事件相关电位(erp)的数据中获得:它假设诱发电位独立于刺激同一性,仅依赖于用户的注意状态。我们质疑这一假设,并研究了几种从ERP数据中提取子类特定特征的方法。此外,我们提出了一种新的分类方法,该方法利用平均收缩来利用子类特定的特征。基于对两个BCI数据集的重新分析,我们表明我们的新方法优于标准LDA方法,同时计算效率很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mean shrinkage improves the classification of ERP signals by exploiting additional label information
Linear discriminant analysis (LDA) is the most commonly used classification method for single trial data in a brain-computer interface (BCI) framework. The popularity of LDA arises from its robustness, simplicity and high accuracy. However, the standard LDA approach is not capable to exploit sublabel information (such as stimulus identity), which is accessible in data from event related potentials (ERPs): it assumes that the evoked potentials are independent of the stimulus identity and dependent only on the users' attentional state. We question this assumption and investigate several methods which extract subclass-specific features from ERP data. Moreover, we propose a novel classification approach which exploits subclass-specific features using mean shrinkage. Based on a reanalysis of two BCI data sets, we show that our novel approach outperforms the standard LDA approach, while being computationally highly efficient.
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