登革出血热爆发风险水平预测的极限学习机方法

A. M. Najar, M. I. Irawan, D. Adzkiya
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引用次数: 9

摘要

登革出血热(DHF)是印度尼西亚的主要卫生问题之一。随着人口流动和人口密度的增加、天气变化以及其他流行因素,登革热患者人数也在增加。为了优化登革出血热暴发的预防,重要的是获得与登革出血热暴发风险水平相关的预测,因为每个地区需要根据其风险水平进行治疗。登革出血热的传播与天气条件密切相关。因此,在本研究中,我们采用极限学习机(ELM)方法来预测基于天气条件的爆发风险。我们以天气变量为输入节点,以登革出血热爆发风险水平为目标,开发了ELM架构。我们使用了二进制的s型激活函数和双极s型激活函数,在5- 200个节点之间隐藏了一些神经元。结果表明,使用包含50个隐藏神经元的二进制s型激活函数的ELM网络可以预测DHF的风险水平,并且ELM网络的性能最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extreme Learning Machine Method for Dengue Hemorrhagic Fever Outbreak Risk Level Prediction
Dengue Hemorrhagic Fever (DHF) is one of the major health problems in Indonesia. With increasing mobility and population density, weather changes, other epidemic factors, the number of dengue fever patients also increases. In order to optimize the prevention of DHF outbreaks, it is important to obtain predictions related to the risk level of DHF outbreak, because each region needs to be treated according to its risk level. The spread of DHF is closely related to weather conditions. Therefore in this study, we apply extreme learning machine (ELM) method to predict the risk of outbreak based on weather condition. We Develop ELM architecture with weather variables as input nodes and risk level of DHF outbreak as the target. We use binary sigmoid activation function and bipolar sigmoid with a number of hidden neurons between 5- 200 nodes. The results show that ELM can predict the level of risk of DHF with the best performance of ELM network using a binary sigmoid activation function with 50 hidden neurons.
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