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Automated feature learning using deep convolutional auto-encoder neural network for clustering electroencephalograms into sleep stages

机译:使用深度卷积自动编码器神经网络进行自动特征学习,将脑电图聚类到睡眠阶段

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Deep neural networks have emerged as popular machine learning tools due to their ability to automatically learn feature representations from raw input data. An auto-encoder neural network is a special network that can be trained in an unsupervised manner for automated feature learning. Unsupervised analysis of EEG signals is highly desirable since supervised analysis requires manual labeling of EEG signals which can be labor intensive and time consuming given the large amount of EEG data collected. We present a deep convolutional auto-encoder neural network to automatically learn feature representations from raw EEG signals in an unsupervised manner. We use the features extracted from the auto-encoder neural network for clustering EEG signals into sleep stages. For clustering, we test two algorithms: K-means - which is a single-membership model, and the latent Dirichlet allocation (LDA) topic model - which is a mixed membership model. Results are presented demonstrating an improvement in clustering performance using auto-encoder features compared to standard manually extracted features.
机译:由于深度神经网络能够自动从原始输入数据中学习特征表示,因此已经成为流行的机器学习工具。自动编码器神经网络是一种特殊的网络,可以无监督的方式对其进行训练,以进行自动特征学习。由于监督分析需要手动标记EEG信号,因此非常需要对EEG信号进行无监督分析,考虑到收集到的大量EEG数据,这可能是劳动密集型且耗时的。我们提出了一种深度卷积自动编码器神经网络,以无监督的方式从原始EEG信号中自动学习特征表示。我们使用从自动编码器神经网络中提取的功能将EEG信号聚类到睡眠阶段。对于聚类,我们测试了两种算法:K均值-一种单成员资格模型,以及潜在狄利克雷分配(LDA)主题模型-一种混合成员资格模型。呈现的结果表明,与标准的手动提取功能相比,使用自动编码器功能可以改善聚类性能。

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