基于BFGS优化器的泗水市Covid-19预测病例反向传播

Z. Fitriah, Mohamad Handri Tuloli, S. Anam, Noor Hidayat, Indah Yanti, D. Mahanani
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引用次数: 0

摘要

Covid-19是一种名为SARS-CoV-2的新型冠状病毒。东爪哇的泗水是印度尼西亚感染Covid-19病例最多的城市之一。预测Covid-19是一件重要的事情。其中一种预测方法是人工神经网络(ANN)。反向传播算法是人工神经网络方法之一,已成功应用于各个领域。然而,反向传播的性能取决于结构和优化方法。采用梯度下降法对标准反向传播算法进行了优化。Broyden - Fletcher - Goldfarb - Shanno (BFGS)算法比梯度下降算法更快。本文利用BFGS反向传播技术对泗水市新冠肺炎病例进行预测。还测试了几种反向传播参数的场景,以产生最佳性能。该方法与标准反向传播算法相比,具有更快的收敛速度和更好的预测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Backpropagation with BFGS Optimizer for Covid-19 Prediction Cases in Surabaya
Covid-19 is a new type of corona virus called SARS-CoV-2. One of the cities that has contributed the most to infected Covid-19 cases in Indonesia is Surabaya, East Java. Predicting the Covid-19 is the important thing to do. One of the prediction methods is Artificial Neural Network (ANN). The backpropagation algorithm is one of the ANN methods that has been successfully used in various fields. However, the performance of backpropagation is depended on the architecture and optimization method. The standard backpropagation algorithm is optimized by gradient descent method. The Broyden - Fletcher - Goldfarb - Shanno (BFGS) algorithm works faster then gradient descent. This paper was predicting the Covid-19 cases in Surabaya using backpropagation with BFGS. Several scenarios of backpropagation parameters were also tested to produce optimal performance. The proposed method gives better results with a faster convergence then the standard backpropagation algorithm for predicting the Covid-19 cases in Surabaya.
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