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Deep Neuroevolution: Training Deep Neural Networks for False Alarm Detection in Intensive Care Units

机译:深度神经进化:训练深层神经网络以在重症监护病房提供虚假警报检测

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We present a neuroevolution based-approach for training neural networks based on genetic algorithms, as applied to the problem of detecting false alarms in Intensive Care Units (ICU) based on physiological data. Typically, optimisation in neural networks is performed via backpropagation (BP) with stochastic gradient-based learning. Nevertheless, recent works (c.f., [1]) have shown promising results in terms of utilising gradient-free, population-based genetic algorithms, suggesting that in certain cases gradient-based optimisation is not the best approach to follow. In this paper, we empirically show that utilising evolutionary and swarm intelligence algorithms can improve the performance of deep neural networks in problems such as the detection of false alarms in ICU. In more detail, we present results that improve the state-of-the-art accuracy on the corresponding Physionet challenge, while reducing the number of suppressed true alarms by deploying and adapting Dispersive Flies Optimisation (DFO).
机译:我们提出了一种基于神经进化的方法,用于训练基于遗传算法的神经网络,该方法适用于根据生理数据检测重症监护病房(ICU)中的虚警的问题。通常,神经网络的优化是通过反向传播(BP)与基于随机梯度的学习进行的。尽管如此,最近的工作(参见[1])在利用无梯度的,基于种群的遗传算法方面显示出令人鼓舞的结果,这表明在某些情况下,基于梯度的优化并不是最佳的方法。在本文中,我们通过经验证明,在诸如ICU中的虚警检测等问题上,利用进化和群体智能算法可以提高深度神经网络的性能。更详细地讲,我们提出的结果可提高相应Physionet挑战的最新准确性,同时通过部署和调整分散果蝇优化(DFO)来减少被抑制的真实警报的数量。

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