A Review of Epidemic Forecasting Using Artificial Neural Networks

Philemon Manliura Datilo, Zuhaimy Ismail, Jayeola Dare
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引用次数: 45

Abstract

Background and aims: Since accurate forecasts help inform decisions for preventive health-care intervention and epidemic control, this goal can only be achieved by making use of appropriate techniques and methodologies. As much as forecast precision is important, methods and model selection procedures are critical to forecast precision. This study aimed at providing an overview of the selection of the right artificial neural network (ANN) methodology for the epidemic forecasts. It is necessary for forecasters to apply the right tools for the epidemic forecasts with high precision. Methods: It involved sampling and survey of epidemic forecasts based on ANN. A comparison of performance using ANN forecast and other methods was reviewed. Hybrids of a neural network with other classical methods or meta-heuristics that improved performance of epidemic forecasts were analysed. Results: Implementing hybrid ANN using data transformation techniques based on improved algorithms, combining forecast models, and using technological platforms enhance the learning and generalization of ANN in forecasting epidemics. Conclusion: The selection of forecasting tool is critical to the precision of epidemic forecast; hence, a working guide for the choice of appropriate tools will help reduce inconsistency and imprecision in forecasting epidemic size in populations. ANN hybrids that combined other algorithms and models, data transformation and technology should be used for an epidemic forecast.
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人工神经网络流行病预测研究进展
背景和目的:由于准确的预测有助于为预防性保健干预和流行病控制的决策提供信息,因此只有利用适当的技术和方法才能实现这一目标。预测精度固然重要,但预测方法和模型选择程序对预测精度也至关重要。本研究旨在为流行病预测提供正确的人工神经网络(ANN)方法的选择概述。预报员有必要运用正确的工具进行高精度的疫情预报。方法:对基于人工神经网络的疫情预测进行抽样调查。对人工神经网络预测与其他方法的性能进行了比较。分析了神经网络与其他经典方法或元启发式方法的混合,提高了流行病预测的性能。结果:采用基于改进算法的数据转换技术,结合预测模型,利用技术平台实现混合神经网络,增强了神经网络在流行病预测中的学习性和泛化性。结论:预测工具的选择对疫情预测的准确性至关重要;因此,选择适当工具的工作指南将有助于减少预测人群流行病规模的不一致和不精确。应将人工神经网络的混合算法和模型、数据转换和技术相结合,用于流行病预测。
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