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Time-frequency data reduction for event related potentials: Combining principal component analysis and matching pursuit

机译:事件相关电位的时频数据缩减:结合主成分分析和匹配追踪

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摘要

Joint time-frequency representations offer a rich representation of event related potentials (ERPs) that cannot be obtained through individual time or frequency domain analysis. This representation, however, comes at the expense of increased data volume and the difficulty of interpreting the resulting representations. Therefore, methods that can reduce the large amount of time-frequency data to experimentally relevant components are essential. In this paper, we present a method that reduces the large volume of ERP time-frequency data into a few significant time-frequency parameters. The proposed method is based on applying the widely used matching pursuit (MP) approach, with a Gabor dictionary, to principal components extracted from the time-frequency domain. The proposed PCA-Gabor decomposition is compared with other time-frequency data reduction methods such as the time-frequency PCA approach alone and standard matching pursuit methods using a Gabor dictionary for both simulated and biological data. The results show that the proposed PCA-Gabor approach performs better than either the PCA alone or the standard MP data reduction methods, by using the smallest amount of ERP data variance to produce the strongest statistical separation between experimental conditions.
机译:联合时频表示法提供了事件相关电位(ERP)的丰富表示法,而这些事件相关电位是无法通过单独的时域或频域分析获得的。然而,这种表示是以增加的数据量和解释结果表示的困难为代价的。因此,必不可少的方法是可以将大量时频数据减少到与实验相关的成分。在本文中,我们提出了一种将大量ERP时频数据减少为几个重要的时频参数的方法。所提出的方法是基于将具有Gabor字典的广泛使用的匹配追踪(MP)方法应用于从时频域提取的主成分。将拟议的PCA-Gabor分解与其他时频数据约简方法进行比较,例如单独的时频PCA方法和使用Gabor字典针对模拟和生物数据的标准匹配追踪方法。结果表明,所提出的PCA-Gabor方法比单独使用PCA或标准MP数据缩减方法的性能更好,它使用最小量的ERP数据差异以在实验条件之间产生最强的统计分离。

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