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Z-Score Linear Discriminant Analysis for EEG Based Brain-Computer Interfaces

机译:基于EEG的脑机接口的Z分数线性判别分析

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摘要

Linear discriminant analysis (LDA) is one of the most popular classification algorithms for brain-computer interfaces (BCI). LDA assumes Gaussian distribution of the data, with equal covariance matrices for the concerned classes, however, the assumption is not usually held in actual BCI applications, where the heteroscedastic class distributions are usually observed. This paper proposes an enhanced version of LDA, namely z-score linear discriminant analysis (Z-LDA), which introduces a new decision boundary definition strategy to handle with the heteroscedastic class distributions. Z-LDA defines decision boundary through z-score utilizing both mean and standard deviation information of the projected data, which can adaptively adjust the decision boundary to fit for heteroscedastic distribution situation. Results derived from both simulation dataset and two actual BCI datasets consistently show that Z-LDA achieves significantly higher average classification accuracies than conventional LDA, indicating the superiority of the new proposed decision boundary definition strategy.
机译:线性判别分析(LDA)是脑机接口(BCI)最受欢迎的分类算法之一。 LDA假设数据是高斯分布的,并且相关类别具有相同的协方差矩阵,但是,该假设通常在实际的BCI应用程序中并不成立,在该应用程序中通常会观察到异方差类别分布。本文提出了LDA的增强版本,即z分数线性判别分析(Z-LDA),它引入了一种新的决策边界定义策略来处理异方差类分布。 Z-LDA利用投影数据的均值和标准差信息通过z分数定义决策边界,可以自适应地调整决策边界以适应异方差分布情况。从模拟数据集和两个实际BCI数据集获得的结果始终表明,Z-LDA的平均分类精度明显高于传统LDA,这表明新提出的决策边界定义策略具有优越性。

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