预测美国COVID - 19确诊病例的机器学习算法

Mario Fernando Jojoa Acosta, Begonya García-Zapirain Soto
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引用次数: 2

摘要

本文提出了一种多层感知机和支持向量机算法来预测美国不同国家的covid - 19感染人数。它打算成为决策和应对世界目前面临的这一流行病的工具。这些模型使用来自欧盟存储库的开放数据进行了训练和测试,该存储库对2020年5月25日之前确诊的传染性病例的时间序列进行了建模。使用禁忌列表算法建立每层神经元数量的超参数。选定进行这项研究的国家是巴西、智利、哥伦比亚、墨西哥、秘鲁和美国。使用的指标是皮尔逊相关系数(CP)、平均绝对误差(MAE)和平均百分比误差(MPE)。对于测试阶段,我们得到以下结果:巴西,CP=0.65, MAE=2508, MPE=17%;智利,CP=0.64, MAE=504, MPE=16%;哥伦比亚,CP=0.83, MAE=76, MPE=9%;墨西哥,CP=0.77, MAE=231, MPE=9%;秘鲁,CP=0.76, MAE=686, MPE=18%;美国,CP=0.93, MAE=799, MPE=4%。这导致了强大的机器学习工具,尽管有必要根据数据和国家大流行的阶段使用特定的算法。
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Machine Learning Algorithms for Forecasting COVID 19 Confirmed Cases in America
This paper presents a Multilayer Perceptron and Support Vector Machine algorithms approach to predict the number of COVID19 infections in different countries of America. It intends to serve as a tool for decision-making and tackling the pandemic that the world is currently facing. The models were trained and tested using open data from the European Union repository where a time series of confirmed contagious cases was modeled until May 25, 2020. The hyperparameters as number of neurons per layer were set up using a tabu list algorithm. The countries selected to carry out the study were Brazil, Chile, Colombia, Mexico, Peru and the United States. The metrics used are Pearson’s correlation coefficient (CP), Mean Absolute Error (MAE), and Mean Percentage Error (MPE). For the testing stage we obtained the following results: Brazil, CP=0.65, MAE=2508 and MPE=17%; Chile, CP=0.64, MAE=504, MPE=16%; Colombia, CP=0.83, MAE=76, MPE=9%; Mexico, CP=0.77, MAE=231, MPE=9%; Peru, CP=0.76, MAE=686, MPE=18% and the United States of America, CP=0.93, MAE=799, MPE=4%. This resulted in powerful machine learning tools although it is necessary to use specific algorithms depending on the data and the stage of the country’s pandemic.
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