Python Model Predicts Covid-19 Cases since Omicron in Indonesia

Muhammad Furqan Rasyid
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Abstract

The proposed work uses Support Vector Regression model to predict the new cases, recovered cases, and deaths cases of covid-19 every day during sub-variant omicron spread in Indonesia. We collected data from June 14, 2022, to August 12, 2022 (60 Days). This model was developed in Python 3.6.6 to get the predictive value of the issues mentioned above up to September 21, 2022. The proposed methodology uses a SVR model with the Radial Basis Function as the kernel and a 10% confidence interval for curve fitting. The data collected has been divided into 2 with a size of 40% test data and 60% training data. Mean Squared Error, Root Mean Squared Error, Regression score, and percentage accuracy calculated the model performance parameters. This model has an accuracy above 87% in predicting new cases and recovered patients and 68% in predicting daily death cases. The results show a Gaussian decrease in the number of cases, and it could take another 4 to 6 weeks for it to drop to the minimum level as the origin of the undiscovered omicron sub-variant. RBF (Radial Basis Function) very efficient and has higher accuracy than linear or polynomial regression as kernel of SVR.
Python模型预测自印度尼西亚Omicron以来的Covid-19病例
建议的工作使用支持向量回归模型来预测亚变异组粒在印度尼西亚传播期间每天的covid-19新病例、康复病例和死亡病例。我们收集了2022年6月14日至2022年8月12日(60天)的数据。该模型是在Python 3.6.6中开发的,以获得截至2022年9月21日的上述问题的预测值。该方法采用以径向基函数为核的支持向量回归模型,以10%的置信区间进行曲线拟合。收集到的数据被分成2个,大小分别为40%的测试数据和60%的训练数据。均方误差、均方根误差、回归分数和百分比精度计算模型性能参数。该模型预测新发病例和康复患者的准确率在87%以上,预测每日死亡病例的准确率在68%以上。结果显示,病例数呈高斯下降趋势,并且可能需要4到6周才能降至最低水平,因为未发现的组粒亚变体的起源。RBF (Radial Basis Function,径向基函数)作为支持向量回归的核函数,具有比线性或多项式回归更高的精度和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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审稿时长
10 weeks
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