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Data Modeling for detection of epidemic outbreak

机译:用于流行病暴发检测的数据建模

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摘要

Data Modeling is successfully applied to outbreak detection using epidemicological time series data. With proper selection of features, same day detection was demonstrated. Predictive Data Models are derived from the features in the form of integro-differential equations or their solution. These models are used as real-time change detectors. Data Modeling enables change detection using only nominal (no-outbreak) examples for training. Modeling naturally occurring dynamics due to assignable causes such as flu season enables distinction to be made of chemical and biological (chem-bio) causes.
机译:数据建模已成功应用于使用流行病学时间序列数据的暴发检测。通过正确选择功能,演示了当天检测。预测数据模型以整数微分方程或它们的解的形式从这些特征中得出。这些模型用作实时变化检测器。数据建模仅使用名义(无爆发)示例进行培训就可以进行更改检测。由于可分配原因(例如流感季节)而对自然发生的动力学建模,可以区分化学和生物(化学-生物)原因。

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