基于递归神经网络模型的COVID-19预测

A. Alamsyah, B. Prasetiyo, M. Hakim, F. D. Pradana
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引用次数: 6

摘要

2019年底,中国首次发现感染人类的新冠肺炎病例。从那时起,新冠肺炎几乎蔓延到世界上所有国家。为了克服这个问题,需要迅速努力更快地识别感染新冠肺炎的人类。复发神经网络(RNN)是潜在新冠肺炎疾病的替代诊断之一。在本文中,RNN使用Elman网络实现,并应用于Kaggle的新冠肺炎数据集。数据集由70%的训练数据和30%的测试数据组成。使用的学习参数是最大历元、学习后期和隐藏节点。研究结果表明,准确率为88。
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Prediction of COVID-19 Using Recurrent Neural Network Model
The COVID-19 case that infected humans was first discovered in China at the end of 2019. Since then, COVID-19 has spread to almost all countries in the world. To overcome this problem, it takes a quick effort to identify humans infected with COVID-19 more quickly. One of the alternative diagnoses for potential COVID-19 disease is Recurrent Neural Network (RNN). In this paper, RNN is implemented using the Elman network and applied to the COVID-19 dataset from Kaggle. The dataset consists of 70% training data and 30% test data. The learning parameters used were the maximum epoch, learning late, and hidden nodes. The research results show the percentage of accuracy is 88.
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审稿时长
24 weeks
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