基于时间序列回归的登革热传播预测模型

Muhammad Danish Waseem, Ali Nawaz, Uzair Rasheed, Abir Raza, Mubarak Omar Albarka
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引用次数: 0

摘要

登革热是一种病毒性疾病,由埃及伊蚊传播。据世卫组织称,全世界每年报告1亿至4亿登革热感染病例。登革热蚊子在热带地区受到抑制,在潮湿的气候条件下繁殖。由于不可能完全清除这些地区的蚊子,因此,分析不同气候因素与登革热传播之间的关系对于预测未来的病例数量非常重要,以便事先采取预防措施,尽量减少疾病的传播。具体来说,为了预测传播,我们在公开的登盖数据集上使用了两个著名的时间序列模型,即SARIMA和SARIMAX。模型的性能通过使用平均绝对误差(MAE)进行评估,在SARIMA和SARIMAX上分别获得27.39和25.52分,这表明我们提出的方法优于其他现有的机器学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Time Series Regression-based Model for Predicting the Spread of Dengue Disease
Dengue is a viral disease, spread by the mosquito species Aedes aegypti. According to WHO, every year 100-400 million cases of dengue infection are reported worldwide. Dengue mosquito inhibits in tropical regions and proliferates in wet climate conditions. Since it is impossible to clean those regions from the mosquito completely, therefore an analysis of the relationship between different climatic factors and dengue spread is important to forecast the number of cases ahead so that precautionary measures can be taken beforehand to minimize the disease spread. Specifically, to predict the spread we employed two prominent time series models i.e. SARIMA and SARIMAX on the publicly available DengAI dataset. The performance of the models is evaluated by using Mean Absolute Error (MAE), achieving MAE scores of 27.39 and 25.52 on SARIMA and SARIMAX respectively, which reveals that our proposed methodology outperformed other existing machine learning methods.
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