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REGULARIZED LDA BASED ON SEPARABLE SCATTER MATRICES FOR CLASSIFICATION OF SPATIO-SPECTRAL EEG PATTERNS

机译:基于可分离散点矩阵的正则化LDA,用于分类时空谱图案

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Linear discriminant analysis (LDA) is a commonly-used feature extraction technique. For matrix-variate data such as spatio-spectral electroencephalogram (EEG), matrix-variate LDA formulations have been proposed. Compared to the standard vector-variate LDA, these formulations assume a separable structure for the within-class and between-class scatter matrices; these structured parameters can be estimated more accurately with a limited number of training samples. However, separable scatters do not fit some data, resulting in aggravated performance for matrix-variate methods. This paper first proposes a common framework for the vector-variate LDA with non-separable scatters and our previously proposed solution with separable scatters. Then, a regularization of the non-separable scatter estimates toward the separable estimates is introduced. This novel regularized framework integrates vector-variate and matrix-variate approaches, and allows the estimated scatter matrices to adapt to the data characteristics. Experiments on data set V from BCI competition III demonstrate that the proposed framework achieves a considerable classification performance gain.
机译:线性判别分析(LDA)是一种共同使用的特征提取技术。对于诸如时空型脑电图(EEG)的矩阵变化数据,已经提出了基质变化LDA制剂。与标准载体变化LDA相比,这些配方采用可分离结构,用于课堂内和级散射矩阵之间;这些结构化参数可以使用有限数量的训练样本来估计。但是,可分离的散文不符合一些数据,导致矩阵变化方法的性能加剧。本文首先为载体变化LDA提出了一种具有不可分离的散射的常见框架,以及我们先前提出的解决方案,具有可分离的散击。然后,引入了朝向可分离估计的不可分散的散射估计的正则化。这种新颖的正则化框架集成了向量变化和矩阵变化方法,并允许估计的散射矩阵适应数据特性。 BCI竞赛III的数据集V的实验证明,拟议的框架实现了相当大的分类性能增益。

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