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首页> 外文期刊>Journal of Artificial Evolution and Applications >Evolutionary Selection of Features forNeural Sleep/Wake Discrimination
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Evolutionary Selection of Features forNeural Sleep/Wake Discrimination

机译:神经睡眠/觉醒歧视特征的进化选择

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摘要

In biomedical signal analysis, artificial neural networks are often used for pattern classification because of their capability fornonlinear class separation and the possibility to efficiently implement them on a microcontroller. Typically, the network topology isdesigned by hand, and a gradient-based search algorithm is used to find a set of suitable parameters for the given classification task.In many cases, however, the choice of the network architecture is a critical and difficult task. For example, hand-designed networksoften require more computational resources than necessary because they rely on input features that provide no information or areredundant. In the case of mobile applications, where computational resources and energy are limited, this is especially detrimental.Neuroevolutionary methods which allow for the automatic synthesis of network topology and parameters offer a solution to theseproblems. In this paper, we use analog genetic encoding (AGE) for the evolutionary synthesis of a neural classifier for a mobilesleep/wake discrimination system. The comparison with a hand-designed classifier trained with back propagation shows that theevolved neural classifiers display similar performance to the hand-designed networks, but using a greatly reduced set of inputs,thus reducing computation time and improving the energy efficiency of the mobile system.
机译:在生物医学信号分析中,人工神经网络通常用于模式分类,因为它们具有非线性类别分离的能力,并且有可能在微控制器上有效实现它们。通常,网络拓扑是手动设计的,并且基于梯度的搜索算法用于为给定的分类任务找到一组合适的参数。然而,在许多情况下,网络体系结构的选择是一项关键且困难的任务。例如,手工设计的网络软件需要比所需更多的计算资源,因为它们依赖于不提供信息或冗余的输入功能。对于计算资源和能源有限的移动应用而言,这尤其有害。神经进化方法可以自动综合网络拓扑和参数,为这些问题提供了解决方案。在本文中,我们将模拟遗传编码(AGE)用于移动睡眠/唤醒识别系统的神经分类器的进化综合。与经过反向传播训练的手工设计分类器的比较表明,进化的神经分类器显示出与手工设计的网络类似的性能,但是使用的输入量大大减少,从而减少了计算时间并提高了移动系统的能源效率。

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