阻塞性睡眠呼吸暂停发作分类的深度神经网络超参数设置

I. D. Falco, G. Pietro, Giovanna Sannino, U. Scafuri, E. Tarantino, A. D. Cioppa, G. Trunfio
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引用次数: 17

摘要

传感设备在医疗领域的广泛可用性导致创建大型和非常大的数据集。因此,在这些数据集中进行分类的任务变得越来越困难。深度神经网络(dnn)在分类方面非常有效,但为其超参数找到最佳值是一项困难且耗时的任务。本文介绍了一种利用进化算法减少执行时间,在面临分类任务时自动找到适合深度神经网络的超参数值的方法。这种减少是通过两种机制的结合而获得的。前者由差分进化算法的分布式版本构成。后者是基于一个旨在减少训练集大小的过程,并依赖于数据集属性空间的立方体分解。在阻塞性睡眠呼吸暂停的医学数据集上进行了实验。他们表明,相对于这种减少不受影响的情况,在更短的时间内获得次优DNN超参数值,并且这不会损害测试集项目分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Neural Network Hyper-Parameter Setting for Classification of Obstructive Sleep Apnea Episodes
The wide availability of sensing devices in the medical domain causes the creation of large and very large data sets. Hence, tasks as the classification in such data sets becomes more and more difficult. Deep Neural Networks (DNNs) are very effective in classification, yet finding the best values for their hyper-parameters is a difficult and time-consuming task. This paper introduces an approach to decrease execution times to automatically find good hyper-parameter values for DNN through Evolutionary Algorithms when classification task is faced. This decrease is obtained through the combination of two mechanisms. The former is constituted by a distributed version for a Differential Evolution algorithm. The latter is based on a procedure aimed at reducing the size of the training set and relying on a decomposition into cubes of the space of the data set attributes. Experiments are carried out on a medical data set about Obstructive Sleep Anpnea. They show that sub-optimal DNN hyper-parameter values are obtained in a much lower time with respect to the case where this reduction is not effected, and that this does not come to the detriment of the accuracy in the classification over the test set items.
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