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Uncovering low-dimensional structure in high-dimensional representations of long-term recordings in people with epilepsy

机译:在癫痫中的长期记录的高维表述中揭示低维结构

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Effective representations of recordings of epileptic activity for seizure prediction are high-dimensional, which prevents their visualization. Here we introduce and evaluate methods to find low-dimensional (2D or 3D) descriptors of these high-dimensional representations, which are amenable for visualization. Once low-dimensional descriptors are found, it is useful to identify structure in them. We evaluate clustering algorithms to automatically identify this structure. In addition, typical recordings of epileptic activity are long, extending for several days or weeks. We present and assess extensions of the previous methods to handle large datasets.
机译:用于癫痫发作预测的癫痫活动录音的有效表示是高维度,可防止其可视化。在这里,我们介绍和评估找到这些高维表示的低维(2D或3D或3D)描述符的方法,这对于可视化是可视化的。一旦找到低维描述符,它可以识别它们中的结构是有用的。我们评估聚类算法以自动识别此结构。此外,癫痫活动的典型记录长,延长几天或数周。我们展示并评估以前的方法处理大型数据集的扩展。

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