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A Novel Graph Regularized Sparse Linear Discriminant Analysis Model for EEG Emotion Recognition

机译:新型图正则化稀疏线性判别分析模型的脑电信号情感识别

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In this paper, a novel regression model, called graph regularized sparse linear discriminant analysis (GraphSLDA), is proposed to deal with EEG emotion recognition problem. GraphSLDA extends the conventional linear discriminant analysis (LDA) method by imposing a graph regularization and a sparse regularization on the transform matrix of LDA, such that it is able to simultaneously cope with sparse transform matrix learning while preserve the intrinsic manifold of the data samples. To cope with the EEG emotion recognition, we extract a set of frequency based EEG features to training the GraphSLDA model and also use it as EEG emotion classifier for testing EEG signals, in which we divide the raw EEG signals into five frequency bands, i.e., δ, θ, α, β, and γ. To evaluate the proposed GraphSLDA model, we conduct experiments on the SEED database. The experimental results show that the proposed algorithm GraphSLDA is superior to the classic baselines.
机译:本文提出了一种新的回归模型,称为图正则化稀疏线性判别分析(GraphSLDA),以解决脑电信号情感识别问题。 GraphSLDA通过在LDA的变换矩阵上施加图正则化和稀疏正则化扩展了常规线性判别分析(LDA)方法,从而使其能够同时应对稀疏变换矩阵学习,同时保留数据样本的固有流形。为了应对EEG情绪识别,我们提取了一组基于频率的EEG特征以训练GraphSLDA模型,并将其用作测试EEG信号的EEG情绪分类器,其中将原始EEG信号划分为五个频段,即δ,θ,α,β和γ。为了评估提出的GraphSLDA模型,我们在SEED数据库上进行了实验。实验结果表明,所提出的算法GraphSLDA优于经典基线。

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