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Prediction of Infectious Disease Spread Using Twitter: A Case of Influenza

机译:使用Twitter预测传染病传播:一例流感

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Nowadays, detecting the disaster phenomena and predicting the final stage become very important in the risk analysis view-point. The statistical methods provide accurate estimates of parameters when the data are completely given. However, when the data are incomplete, the accuracy of the estimates becomes poor. Therefore, statistical methods are weak in predicting the future trends. The SIR methods, for infectious disease spread prediction, using the differential equations can sometimes provide accurate estimates for the final stage. These methods, however, require some inspection time, which means the delay of analysis at least one week or so when we want to predict the future trends. To detect the disasters and to predict the future trends much earlier, we can use the social network system (SNS). In this paper, we have proposed a method to predict the future trend of influenza by using Twitter. We have analyzed the possibility of building a regression model by combining Twitter messages and CDC's Influenza-Like Illness (ILI) data, and we have found that the multiple linear regression model with ridge regularization outperforms the single linear regression model and other un-regularized least squared methods. The model of multiple linear regression with ridge can notably improve the prediction accuracy.
机译:如今,从风险分析的角度出发,检测灾难现象并预测最终阶段变得非常重要。当数据完全给出时,统计方法可提供参数的准确估计。但是,当数据不完整时,估计的准确性会变差。因此,统计方法无法预测未来趋势。使用微分方程对传染病传播进行预测的SIR方法有时可以为最终阶段提供准确的估计。但是,这些方法需要一些检查时间,这意味着当我们要预测未来趋势时,分析至少要延迟一周左右。为了更早地发现灾难并预测未来趋势,我们可以使用社交网络系统(SNS)。在本文中,我们提出了一种使用Twitter预测流感未来趋势的方法。我们分析了通过结合Twitter消息和CDC的流感样疾病(ILI)数据建立回归模型的可能性,并且我们发现具有岭正则化的多元线性回归模型优于单一线性回归模型和其他未正规化的最小回归模型。平方方法。带有岭的多元线性回归模型可以显着提高预测精度。

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