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Epidemiological Spatiotemporal Data Exploration and Prediction

机译:流行病学时尚数据探索与预测

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This paper addresses epidemiological spatiotemporal datasets such as those reporting the number of cases of infectious diseases over time and by geographical location. It studies methods for exploratory data analysis and for prediction of future cases based on prior data. It emphasizes methods that provide explainable predictions, such as those based on rules and decision trees. These methods are studied in the context of a recently published dataset of weekly Chickenpox cases in Hungarian counties over a 10-year period. As noted in prior work, this dataset exhibits several features, such as seasonality and heteroskedasticity, that make the prediction task especially challenging. This paper describes some results of an experimental study of both the exploratory and predictive aspects.
机译:本文涉及流行病学时尚数据集,例如报告随着时间的推移和地理位置的传染病病例数。 IT研究探索性数据分析的方法,以及基于先前数据的未来案例预测。 它强调提供可解释的预测的方法,例如基于规则和决策树的方法。 这些方法在10年期间在匈牙利县的每周水痘病例的最近公布的数据集的背景下进行了研究。 如前所述,该数据集展示了几种特征,例如季节性和异源性,使预测任务尤其具有挑战性。 本文介绍了对探索性和预测方面的实验研究的一些结果。

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