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Interval feature extraction for classification of event-related potentials (ERP) in EEG data analysis

机译:区间特征提取用于脑电数据分析中的事件相关电位(ERP)分类

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摘要

Event-related potential data can be used to index perceptual and cognitive operations. However, they are typically high-dimensional and noisy. This study examines the original raw data and six feature-extraction methods as a pre-processing step before classification. Four traditionally used feature-extraction methods were considered: principal component analysis, independent component analysis, autoregression, and wavelets. We add to these a less well-known method called interval feature extraction. It overproduces features from the ERP signal and then eliminates irrelevant and redundant features by the fast correlation-based filter. To make the comparisons fair, the other feature-extraction methods were also run with the filter. An experiment on two EEG datasets (four classification scenarios) was carried out to examine the classification accuracy of four classifiers on the extracted features: support vector machines with linear and perceptron kernel, the nearest neighbour classifier and the random forest ensemble method. The interval features led to the best classification accuracy in most of the configurations, specifically when used with the Random Forest classifier ensemble.
机译:事件相关的潜在数据可用于索引感知和认知操作。但是,它们通常是高维且嘈杂的。本研究在分类之前检查了原始数据和六种特征提取方法作为预处理步骤。考虑了四种传统使用的特征提取方法:主成分分析,独立成分分析,自回归和小波。我们向其中添加了一种不太知名的方法,称为间隔特征提取。它会从ERP信号中过度生成特征,然后通过基于快速相关性的滤波器消除不相关和冗余的特征。为了使比较公平,其他特征提取方法也与过滤器一起运行。进行了两个脑电数据集(四个分类方案)的实验,以检验四个分类器在提取特征上的分类精度:具有线性和感知核的支持向量机,最近邻分类器和随机森林集成方法。在大多数配置中,特别是与“随机森林”分类器集成一起使用时,间隔功能导致最佳的分类精度。

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