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LSTM perfomance analysis for predictive models based on Covid-19 dataset

机译:基于Covid-19数据集的LSTM性能预测模型分析

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Within the large amount of data that can be processed with Neural Networks (NN), COVID-19 is leaving us a lot of information that is susceptible to be treated and set trends regarding the development of the disease in the country. The present work shows the implementation and the optimization of a Long Short-Term Memory (LSTM) Neural Network in two different simulation environments, with a dataset related to the number of infected people by COVID-19 in Peru, in order to optimize the prediction level on the number of infected people on following days.
机译:在神经网络(NN)可以处理的大量数据中,COVID-19给我们留下了许多易于治疗的信息,并确定了该国疾病发展的趋势。目前的工作显示了在两个不同的模拟环境中长短期记忆(LSTM)神经网络的实现和优化,以及与秘鲁COVID-19感染人数相关的数据集,以优化预测接下来几天的受感染人数水平。

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