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Bi-directional Long Short-Term Memory using Quantized data of Deep Belief Networks for Sleep Stage Classification

机译:使用深度信念网络的量化数据的双向长期短期记忆,用于睡眠阶段分类

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The study examines the use of quantization to be applied to Bi-directional Long Short-Term Memory (Bi-LSTM), a combination of the two called qBi-LSTM. Quantization used comes from Deep Belief Networks (DBN). It selected DBN for its superiority as a generative model of Deep Learning in producing an optimal artificial feature. Development of qBi-LSTM is expected to improve the performance of Bi-LSTM and also provide efficient time. The qBi-LSTM test is applied for sleep stage classification on St. Vincent’s University Hospital / University College Dublin’s Sleep Apnea Database. The result shows that qBi-LSTM has the highest performance compared to Bi-LSTM and DBN with precision, recall and F-measure values of 86.00%, 72.10%, and 75.27%. The best qBi-LSTM performance is to classify Stage 2 but still fails to classify the stage of REM (Rapid Eye Movement).
机译:这项研究研究了将量化应用于双向长短期记忆(Bi-LSTM)的方法,这是两者的组合,称为qBi-LSTM。使用的量化来自深度信任网络(DBN)。它选择DBN作为其在产生最佳人工特征方面的优势作为深度学习的生成模型。 qBi-LSTM的开发有望改善Bi-LSTM的性能,并提供有效的时间。 qBi-LSTM测试适用于圣文森特大学医院/都柏林大学学院的睡眠呼吸暂停数据库中的睡眠阶段分类。结果表明,与Bi-LSTM和DBN相比,qBi-LSTM的性能最高,精确度,查全率和F测量值分别为86.00%,72.10%和75.27%。最好的qBi-LSTM性能是对阶段2进行分类,但仍不能对REM(快速眼动)阶段进行分类。

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