利用Facebook先知模型预测Covid-19感染的时间序列分析

A. Banu, P. Thirumalaikolundusubramanian
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引用次数: 1

摘要

新冠肺炎疫情引发的国际恐慌在医疗保健、生物医疗和药物发现过程中引发了紧急行动。然而,由于临床前和临床后的测试过程,找到引入药物的可行解决方案是一个耗时的过程。对新冠肺炎的预测和估计可以帮助医生和政府当局对新冠肺炎的后果采取可预防的措施。根据欧洲疾病预防和控制中心的数据,从2019年12月到2020年4月,已通报了2844712例新冠肺炎病例,其中包括201315例死亡病例。这种剧烈的情况不仅应该治疗医生和其他医疗保健提供者。有两种类型的时间序列预测技术。第一种技术时域方法将即将到来的值建模为先前值和当前值的函数。这种方法的基础是时间序列的当前值对其自身过去值的时间序列回归。模型的评估应用于预测过程。第二种被称为频域模型的技术是基于使用正弦和余弦函数对时间的解释。这些解释被称为傅立叶表示。总体而言,该技术利用正弦和余弦函数的回归来对数据的行为进行建模。拟议的工作使用Facebook Prophet模型进行时间序列分析,以预测2021年的趋势。这些模型将作为一种推理工具,在疫情期间做出决策。©2021卡拉德尼兹工业大学。保留所有权利。
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Time series analysis for predicting Covid-19 infection using Facebook prophet model
The International fright due to the occurrence of COVID has created an emergency act in the field of healthcare, bio medical and drug discovery process. However, finding the feasible solution to introduce a drug is a time-consuming process due to pre-clinical and post-clinical testing process. Prediction and estimation of COVID-19 can help the medical practitioners and government authorities to take preventable measure against the outcomes of COVID-19.From December 2019 to April 2020, 2844712 cases of COVID-19 have been informed, which includes 201315 deaths according to European Centre for Disease Prevention and Control. This drastic condition should be treated not only physicians and other health care providers. There are two types of time series forecasting techniques. The first technique time-domain approach models the forthcoming values as a function of previous and current values. The groundwork of this approach is the time series regression of current values of a time series on its own past values. The assessments of the model are applied for forecasting process. The second technique known as Frequency domain models are based on the interpretations of time using sines and cosines functions. These interpretations are known as Fourier representations. Overall, the technique utilizes regressions on sines and cosines function, to model the behavior of the data. The proposed work used Facebook Prophet model for Time Series Analysis to forecast the trend for the year 2021. The models will act as an inference tool to take decisions during pandemic conditions. © 2021 Karadeniz Technical University. All rights reserved.
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