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Integrating ARIMA and Spatiotemporal Bayesian Networks for High Resolution Malaria Prediction

机译:整合Arima和Spatiotemporal Bayesian网络的高分辨率疟疾预测

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Since malaria is prevalent in less developed and more remote areas in which public health resources are often scarce, targeted intervention is essential in allocating resources for effective malaria control. To effectively support targeted intervention, predictive models must be not only accurate but they must also have high temporal and spatial resolution to help determine when and where to intervene. In this paper we take the first essential step towards a system to support targeted intervention in Thailand by developing a high resolution prediction model through the combination of Bayes nets and ARIMA. Bayes nets and ARIMA have complementary strengths, with the Bayes nets better able to represent the effect of environmental variables and ARIMA better able to capture the characteristics of the time series of malaria cases. Leveraging these complementary strengths, we develop an ensemble predictor from the two that has significantly better accuracy that either predictor alone. We build and test the models with data from Tha Song Yang district in northern Thailand, creating village-level models with weekly temporal resolution.
机译:由于疟疾在不太发达的较少发展和更多偏远地区普遍存在的疟疾往往是稀缺的,目标干预对于分配有效疟疾控制的资源至关重要。为了有效地支持有针对性的干预,预测模型不仅必须准确,但它们还必须具有高的时间和空间分辨率,以帮助确定何时何地进行干预。在本文中,我们通过贝叶斯网和阿里马的组合开发高分辨率预测模型来对泰国提供目标干预的第一个基本步骤。贝叶斯网和阿里玛具有互补优势,贝叶斯网更能够代表环境变量和阿米巴更能捕获疟疾病例的时间序列的特征。利用这些互补优势,我们从两者开发了一个合并预测因子,这具有明显更好的准确性,即独自的预测器。我们使用泰国北部宋阳区的数据建立和测试模型,并每周举行村级模型。

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