基于核函数控制高斯过程回归的机器学习深度外推分析Covid-19日病例漂移率

J. Isabona, Divine O. Ojuh
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引用次数: 8

摘要

:在任何疾病暴发期间或之后,对相关数据集进行精确的外推挖掘和分析,可以帮助政府、利益攸关方和卫生部门相关机构就疾病暴发控制和管理做出重要决策。之前的工作主要集中在非平稳的长期数据上,而这项工作主要集中在短期的非平稳和相对嘈杂的数据上。特别是,提出了一种独特的基于核控制概率高斯过程回归模型的非参数机器学习方法,并将其用于建模和分析在大约六周的时间内获得的Covid-19大流行数据。为了实现这一目标,利用MATLAB 2018a计算和机器学习环境来开发和执行高斯过程外推分析。结果表明,与神经网络、神经模糊网络、随机森林、回归树、支持向量机、k近邻和判别线性回归模型等常用的机器学习方法相比,该方法具有较高的可扩展性和最佳性能。这些结果为开展可靠预测和分析传染病出现强度和传播的研究提供了坚实的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based on Kernel Function Controlled Gaussian Process Regression Method for In-depth Extrapolative Analysis of Covid-19 Daily Cases Drift Rates
: Precise extrapolative mining and analysis of relevant dataset during or after any disease outbreak can assist the government, stake holders and relevant agencies in the health sector to make important decisions with respect to the disease outbreak control and management. While prior works has concentrated on non-stationary long term data, this work focuses on a short term non-stationary and relatively noisy data. Particularly, a distinctive nonparametric machine learning method based kernel-controlled probabilistic Gaussian process regression model has been proposed and employed to model and analyze Covid-19 pandemic data acquired over a period of approximately six weeks. To accomplish the aim, the MATLAB 2018a computational and machine learning environment was engaged to develop and perform the Gaussian process extrapolative analysis. The results displayed high scalability and optimal performance over the commonly used machine learning methods such as the Neural networks, Neural-Fuzzy networks, Random forest, Regression tree, Support Vector machines, K-nearest neighbor and Discriminant linear regression models. These results offer a solid foundation for conducting research on reliable prognostic estimations and analysis of contagious disease emergence intensity and spread.
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