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LSTM Recurrent Neural Networks for Influenza Trends Prediction

机译:LSTM递归神经网络用于流感趋势预测

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Influenza-like illness (ILI) is an acute respiratory infection causes substantial mortality and morbidity. Predict Influenza trends and response to a health disease rapidly is crucial to diminish the loss of life. In this paper, we employ the long short term memory (LSTM) recurrent neural networks to forecast the influenza trends. We are the first one to use multiple and novel data sources including virologic surveillance, influenza geographic spread, Google trends, climate and air pollution to predict influenza trends. Moreover, We find there are several environmental and climatic factors have the significant correlation with ILI rate.
机译:流感样疾病(ILI)是一种急性呼吸道感染,可导致大量死亡和发病。快速预测流感趋势和对健康疾病的反应对于减少生命损失至关重要。在本文中,我们使用长期短期记忆(LSTM)循环神经网络来预测流感趋势。我们是第一个使用多种新颖数据源(包括病毒学监测,流感地理分布,Google趋势,气候和空气污染)来预测流感趋势的公司。此外,我们发现有几种环境和气候因素与ILI发生率显着相关。

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