使用浅分类器对睡眠阶段进行分类

Endang Purnama Giri, A. M. Arymurthy, M. I. Fanany, S. Wijaya
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引用次数: 13

摘要

患有睡眠障碍的人,如呼吸暂停,会在睡眠中停止呼吸一段时间。如果经常发生,睡眠障碍对健康是危险的。诊断呼吸暂停的早期步骤是对睡眠中的睡眠阶段进行分类。本研究探讨了一些浅分类器及其在睡眠数据中的可行性。最近,一种使用深度无监督特征学习表征的睡眠阶段分类系统被提出[9]。在我们看来,使用浅分类器对这一问题进行充分的研究仍需进一步研究。本研究利用[9]上的部分数据,重点评价了一些浅分类器对睡眠阶段的分类问题。本研究评估了五种分类器:支持向量机、神经网络、分类树、k-近邻(k-NN)和朴素贝叶斯。实验结果表明,神经网络在睡眠阶段分类问题上表现最好。相对于SVM(在S000个数据上的2级精度),神经网络在计算时间和内存需求方面也比SVM更高效。
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Sleep stages classification using shallow classifiers
A person with sleep disorder such as apnea will stop breathing for a while during sleep. If frequently occurs, sleep disorder is dangerous for health. An early step for diagnosing apnea is by classifying the sleep stages during sleep. This study explores some shallow classifiers and their feasibility applied to sleep data. Recently, a sleep stages classification system that use deep unsupervised features learning representations have been proposed [9]. In our view, an adequate study on this problem using shallow classifiers still need to be investigated. This study, using some of the data on [9], focuses on evaluating some shallow classifier to the sleep stages classification problem. This study evaluates five classifiers: SVM, Neural Network, Classification Tree, k-Nearest Neighborhood (k-NN), and Naive Bayes. Experiment result shows that neural network gives best performance for sleep stage classification problem. Compared to the SVM (the 2-nd rank of accuracy on S000 data), the neural network is also more efficient than SVM in term of computational time and memory requirement.
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