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Optimization of Deep Architectures for EEG Signal Classification: An AutoML Approach Using Evolutionary Algorithms

机译:EEG信号分类深层架构的优化:一种使用进化算法的自动化方法

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摘要

Electroencephalography (EEG) signal classification is a challenging task due to the low signal-to-noise ratio and the usual presence of artifacts from different sources. Different classification techniques, which are usually based on a predefined set of features extracted from the EEG band power distribution profile, have been previously proposed. However, the classification of EEG still remains a challenge, depending on the experimental conditions and the responses to be captured. In this context, the use of deep neural networks offers new opportunities to improve the classification performance without the use of a predefined set of features. Nevertheless, Deep Learning architectures include a vast number of hyperparameters on which the performance of the model relies. In this paper, we propose a method for optimizing Deep Learning models, not only the hyperparameters, but also their structure, which is able to propose solutions that consist of different architectures due to different layer combinations. The experimental results corroborate that deep architectures optimized by our method outperform the baseline approaches and result in computationally efficient models. Moreover, we demonstrate that optimized architectures improve the energy efficiency with respect to the baseline models.
机译:由于低信噪比和来自不同来源的伪影的常规存在,脑电图(EEG)信号分类是一个具有挑战性的任务。已经提出了不同的分类技术,其通常基于从EEG频带配电分布简档提取的预定义的特征集。然而,根据实验条件和要捕获的反应,脑电脑的分类仍然是挑战。在这种情况下,使用深神经网络的使用提供了改善分类性能的新机会,而无需使用预定义的功能。尽管如此,深度学习架构包括大量的超参数,其中模型的性能依赖。在本文中,我们提出了一种优化深度学习模型的方法,不仅是超级学习模型,而且还可以提出由于不同层组合而构成不同架构的解决方案的结构。实验结果证实了我们的方法优化的深层架构优于基线方法并导致计算有效的模型。此外,我们证明优化的架构在基线模型方面提高了能量效率。

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