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An improved random forest algorithm for predicting the COVID-19 pandemic patient health
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2021
Year
Disease DetectionComputational EpidemiologyCovid-19 EpidemiologyMining MethodsDisease ClassificationHeart Disease PredictionCorona Infectious DiseasesCovid-19Data ScienceClinical EpidemiologyRandom Forest AlgorithmPublic HealthPrediction ModellingPredictive AnalyticsCovid-19 PandemicRiskClinical Decision SupportDisease SurveillanceEpidemiologyHealth Data ScienceEpidemic IntelligenceGlobal HealthMedicineRandom ForestHealth Informatics
The 2019 pandemic of the Corona infectious diseases also called “COVID-19” has been emanated in the Asian country China in the year 2019 This is precariously unjustly preventing almost everything in human society This same rapid pace as well as an incremental increase in the proportion of patient populations, consequently, required an efficient and accurate forecast of such an infected client's potential result for proper care utilizing the machine learning model To overcome these needs, the research experiment strives to optimize Covid-19 patient's potential to estimate a revolutionary model focused on an improved random forest (IRF) methodology with safety various features This proposed IRF method has been implemented to predict Covid-19 information about a person’s condition with high-dimensional, unstable functionality Initially, a random forest algorithm will be used for organizing the value of the dependent variable and reducing the measurements By using the COVID-19 Kaggle online dataset set of data, the proposed IRF method as well as existing Random Forest (RF) and Support Vector Machines (SVM) has been implemented over the WEKA Machine learning simulation tool © 2021, Universitatea de Vest Vasile Goldis din Arad All rights reserved