Computer-aided diagnosis tools have experienced rapid growth and development in recent years. Among all, deep learning is the most sophisticated and popular tool. In this paper, researchers propose a novel deep learning model and apply it to COVID-19 diagnosis. Our model uses the tool of fractional calculus, which has the potential to improve the performance of gradient methods. To this end, the researcher proposes a fractional-order gradient method for the back-propagation of convolutional neural networks based on the Caputo definition. However, if only the first term of the infinite series of the Caputo definition is used to approximate the fractional-order derivative, the length of the memory is truncated. Therefore, the fractional-order gradient (FGD) method with a fixed memory step and an adjustable number of terms is used to update the weights of the layers. Experiments were performed on the COVIDx dataset to demonstrate fast convergence, good accuracy, and the ability to bypass the local optimal point. We also compared the performance of the developed fractional-order neural networks and Integer-order neural networks. The results confirmed the effectiveness of our proposed model in the diagnosis of COVID-19.
翻译:计算机辅助诊断工具近年来经历了快速增长和发展,其中深层次学习是最复杂和受欢迎的工具。在本文中,研究人员提出一个新的深层次学习模型,并将其应用于COVID-19诊断。我们的模型使用分微积分微积分工具,该工具有可能改进梯度方法的性能。为此,研究人员根据卡普托定义,为共生神经网络的反向分析提出了一个分序梯度方法。然而,如果只使用Caputo定义无限系列中的第一个术语来接近分数序列衍生物,记忆的长度就会缩短。因此,使用带有固定记忆步骤和可调整术语数的分数偏移梯度方法来更新层的重量。对COVIDx数据集进行了实验,以显示快速趋近、准确和绕过当地最佳点的能力。我们还比较了已开发的分数神经网络和Interas-D神经网络的性能。结果证实了我们提议的COVI模型诊断结果的有效性。