用机器学习预测科维-19 在印度尼西亚的传播

Nur Hayati, Eri Mardiani, Fauziah Fauziah, Toto Haryanto, Viktor Vekky Ronald Repi
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摘要

在之前的研究中,我们使用 FBProphet 模型对印度尼西亚 COVID-19 的爆发进行了预测分析。将 FBProphet 模型应用于时间序列数据的效果相当不错,因为在线性分布的情况下,其 MAPE 为 22.60%。此外,基于之前数据集的模式以及目前活跃病例总数为 2,606 例,在本研究中,我们尝试使用线性回归(LR)模型与 FBProphet 模型进行比较,并使用了来自同一数据源(KAWALCOVID19 网站)的额外数据。数据收集工作从 2020 年 3 月 2 日开始,至 2021 年 12 月 19 日结束。本研究的目的与之前的研究相同,即预测 COVID-19 的传播。分析过程通过验证缺失数据和验证数据变量的格式对数据进行预处理。然后进行描述性分析和数据可视化,从而可以看出在这 657 个数据中,有一个从 2021 年 7 月到 8 月非周期性波动的数据。接下来,使用 FBProphet 和 LR 进行模型分析,并验证每个模型的结果。研究结果以评价指标的形式呈现,与 FBProphet 相比,LR 模型获得了更好的 RMSE、MAE 和 MAPE 值,分别为 292.91%、178%、81% 和 12.79%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MACHINE LEARNING FOR PREDICTING SPREAD OF COVID-19 IN INDONESIA
In previous research, we carried out an analysis using the FBProphet model to predict the COVID-19 outbreak in Indonesia. The application of the FBProphet model to time series data is considered quite good because it produces a MAPE of 22.60% with a linear distribution. Additionally, based on the pattern in the previous dataset and the total number of active cases currently stands at 2,606, in this research we tried to use the Linear Regression (LR) model as a comparison with the FBProphet model by using additional data from the same data source, KAWALCOVID19 website. Data collection started from March 2, 2020 to December 19, 2021. The aim of this research is the same as previous research, namely predicting the spread of COVID-19. The analysis process is carried out by preprocessing the data by validating missing data and validating the format of the data variables. Then carry out descriptive analysis and data visualization so that it can be seen that in this 657 data there is a fluctuates data that non-periodically from July to August 2021. Next, model analysis is carried out using FBProphet and LR and validating the results of each model. The research results are in the form of evaluation metrics where the LR model gets better RMSE, MAE and MAPE values compared to FBProphet, namely 292.91; 178, 81 and 12.79%.
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