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Dengue Incidence Prediction Using Model Variables with Registered Case Feedback

机译:使用已注册病例反馈的模型变量进行登革热发病率预测

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This study discussed building of localized dengue incidence prediction models for districts of Selangor. System identification with Linear Least Square estimation method is used to build a number of model orders with varied lag-time and the most accurate model is selected for each district. Model accuracy is measured using Mean Square Error (MSE) value, with smaller MSE value, represents better accuracy. The flow of study is started with identification of significant weather variables. It was found that all three weather variables namely mean temperature, relative humidity and rainfall are significant predictors. Further inclusion of dengue incidences feedback data into the model was found to enhance the model accuracy. Model accuracy is further tested by comparing between single and ensemble model of few districts. Ensemble model is built using dengue prediction model of its district together with its neighbouring districts, and was found to be better predictor in two out three districts. Therefore, it was concluded that ensemble models predict better in some cases, and single models are better in other cases, depending on rate of human movement between neighbouring districts.
机译:这项研究讨论了雪兰莪地区的局部登革热发病率预测模型的建立。使用线性最小二乘估计方法进行系统识别可建立具有不同滞后时间的多个模型阶,并为每个区域选择最准确的模型。使用均方误差(MSE)值测量模型精度,而MSE值越小,表示的精度越高。研究流程始于确定重要的天气变量。发现所有三个天气变量,即平均温度,相对湿度和降雨量都是重要的预测指标。发现将登革热发病率反馈数据进一步包含到模型中可以提高模型的准确性。通过比较少数地区的单一模型和整体模型,进一步测试了模型的准确性。使用该地区及其邻近地区的登革热预测模型建立了Ensemble模型,并发现在三个地区中有两个是更好的预测指标。因此,可以得出结论,取决于相邻区域之间的人员移动速度,集成模型在某些情况下预测更好,而在其他情况下,单个模型则更好。

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