Modeling of dengue outbreak prediction in Malaysia: A comparison of Neural Network and Nonlinear Regression Model

N. Husin, N. Salim, A. Ahmad
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引用次数: 36

Abstract

Malaysia has a good dengue surveillance system but there have been insufficient findings on suitable model to predict future dengue outbreak. This study aims to design a neural network model (NNM) and nonlinear regression model (NLRM) using different architectures and parameters incorporating time series, location and rainfall data to define the best architecture for early prediction of dengue outbreak. Four architecture of NNM and NLRM were developed in this study. Architecture I involved only dengue cases data, Architecture II involved combination of dengue cases data and rainfall data, Architecture III involved proximity location dengue cases data, while Architecture IV involved the combination of all criterion. The parameters studied in this research were adjusted for optimal performance. These parameters are the learning rate, momentum rate and number of neurons in the hidden layer. The performance of overall architecture was analyzed and the result shows that the MSE for all architectures by using NNM is better compared by NLRM. Furthermore, the results also indicate that architecture IV performs significantly better than other architecture in predicting dengue outbreak and it is therefore proposed as a useful approach in the problem of time series prediction of dengue outbreak.
马来西亚登革热疫情预测建模:神经网络和非线性回归模型的比较
马来西亚有一个良好的登革热监测系统,但是关于预测未来登革热暴发的合适模型的发现还不够。本研究旨在结合时间序列、地点和降雨数据,设计不同架构和参数的神经网络模型(NNM)和非线性回归模型(NLRM),以确定登革热疫情早期预测的最佳架构。本研究开发了四种NNM和NLRM架构。架构I仅涉及登革热病例数据,架构II涉及登革热病例数据与降雨数据的结合,架构III涉及邻近地点登革热病例数据,而架构IV涉及所有标准的结合。本研究中所研究的参数进行了调整,以获得最佳性能。这些参数是学习率,动量率和隐藏层中的神经元数量。对整个体系结构的性能进行了分析,结果表明,与NLRM相比,NNM对所有体系结构的MSE都更好。此外,结果还表明,体系结构IV在预测登革热疫情方面的表现明显优于其他体系结构,因此可以作为登革热疫情时间序列预测问题的有用方法。
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