Predictive Modeling of COVID- 19 Confirmed Cases Using Regressive Objective Regression Methodology

Fernando Martínez Fernández
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Abstract

The use of predictive models for the evolution of the pandemic is of great help in decision-making by the authorities. The fundamental objective of this work was to obtain through the Regressive Objective Regression, predictions of confirmed cases of COVID-19 in the Marta Abreu Teaching Polyclinic of the city of Santa Clara. In short-term modeling the model was significant at 19.7% with an error of 0.12. Variables dichotommics, saw tooth and saw tooth inverted and risk returned in 1.3, and 12 cases the trend is negative and not significant. We can conclude that a perfect result was obtained in the long term with the ROR methodology. The short-term ROR model depends on the cases of COVID-19 in the previous case, 3 cases back and 12 cases back without significant trend. The long-term model is perfect and depends on the cases of COVID-19 in 12 cases ago, with a negative trend.
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基于回归客观回归方法的COVID- 19确诊病例预测建模
使用疫情演变的预测模型对当局的决策有很大帮助。这项工作的基本目标是通过回归客观回归获得圣克拉拉市Marta Abreu教学综合诊所新冠肺炎确诊病例的预测。在短期建模中,该模型的显著性为19.7%,误差为0.12。变量二分法,锯齿和锯齿倒置,风险回归1.3,12例呈阴性且不显著。我们可以得出结论,从长远来看,ROR方法获得了完美的结果。短期ROR模型取决于前一个病例中的新冠肺炎病例、3个病例和12个病例,没有显著趋势。长期模型是完美的,取决于12例前新冠肺炎病例,呈负趋势。
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来源期刊
Bioscience Biotechnology Research Communications
Bioscience Biotechnology Research Communications BIOTECHNOLOGY & APPLIED MICROBIOLOGY-
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