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A Comparative Analysis of Bayesian Network and ARIMA Approaches to Malaria Outbreak Prediction

机译:贝叶斯网络与Arima对疟疾疫情预测方法的比较分析

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Disease outbreaks are important to predict since they indicate hot spots of transmission with high risk of spread to neighboring regions and can thus guide the allocation of resources. While numeric prediction models can be easily used for outbreak prediction by setting thresholds, an alternative is to build a model that specifically classifies situations into outbreak or none. In this paper we compare Bayesian network models built for the outbreak classification problem with Bayesian network, ARIMA and ARIMAX models built for numeric prediction and used for outbreak prediction by thresholding. We show that in most cases the classification models outperform the other models. We then investigate the reasons underlying the differences in performance among the models in order to shed light on their strengths and weaknesses. The models are developed and evaluated using two years of malaria and environmental data from northern Thailand.
机译:疾病爆发对于预测是重要的,因为它们表示具有高风险的传播斑点,蔓延到邻近地区,因此可以指导资源分配。虽然数字预测模型可以通过设置阈值容易地用于爆发预测,但是替代方案是构建一个专门将情况分类为爆发的模型或无。在本文中,我们将贝叶斯网络模型与贝叶斯网络,Arima和Arimax模型建立的爆发分类问题进行了比较,建立了数字预测,并通过阈值化用于爆发预测。我们表明,在大多数情况下,分类模型优于其他模型。然后,我们调查模型中表现差异的原因,以阐明他们的优势和劣势。使用来自泰国北部的两年疟疾和环境数据开发和评估该模型。

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