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Prediction of COVID-19 corona virus pandemic based on time series data using support vector machine
202
Citations
22
References
2020
Year
Corona Virus OutbreakVirus EpidemiologyTime Series DataComputational EpidemiologyCovid-19Support Vector MachineData ScienceSvm ModelPublic HealthPrediction ModellingInfectious Disease EpidemiologyPredictive AnalyticsCovid-19 PandemicVirologyDisease SurveillanceForecastingCovid-19 Corona VirusEpidemiologyEpidemic IntelligenceEmerging Infectious DiseasesGlobal HealthInternational HealthMedicineHealth Informatics
AbstractPredicting the probability of CORONA virus outbreak has been studied in recent days, but the published literature seldom contains multiple model comparisons or predictive analysis of uncertainty. Time series parameters are the core factors influencing infectious diseases such as severe acute respiratory syndrome (SARS) and influenza. As a global pandemic is imminent, the prediction of real-time transmission of COVID-19 is crucial. The objective of this paper is to produce a real-time forecasts using the SVM model. The purpose of this study is to investigate the Corona Virus Disease 2019 (COVID-19) prediction of confirmed, deceased and recovered cases. This prediction will help to plan resources, determine government policy, and provide survivors with immunity passports, and use the same plasma for care. In this analysis, data including attributes such as location wise confirmed, deceased, recovered COVID-19, longitude and latitude were collected from January 22, 2020 to April 25, 2020 worldwide. Support Vector Machine was used to explore the impact on identification, deceased, and recovery.Subject Classification: 97R40Keywords: PandemicSupport vector machineCOVID-19Machine learning
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