Prediksi Penambahan Kasus Covid-19 di Indonesia Melalui Pendekatan Time Series Menggunakan Metode Exponential Smoothing

Calvin Mikhailouzna Gibran, Sulis Setiyawati, Febri Liantoni
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引用次数: 5

Abstract

The Covid-19 pandemic in Indonesia has emerged starting in 2020. To know the development of cases, a good calculation is needed. A prediction system can help in analyzing accurate data on positive causes, cures, and deaths. The right prediction or forecast can be the answer to the question of the impact that will occur, forecasting will provide an overview to the government and the community so that it is hoped that related parties can prepare for future impacts or even reduce the number of cases growth. In this study, the Exponential Smoothing method was used as a prediction calculation. This method is simple but effective in producing accurate predictions. Forecasting data used comes from the Indonesian government with the assumption that the data is valid and reliable. Based on research that has been carried out to predict the increase in new cases of the Indonesian National Covid-19, the best alpha (α) value is 0.33 with an SSE of 1048027,939. This shows that the number of cases is increasing. The results of forecasting in this study using the time series approach and the SES method are more suitable for predicting the percentage increase in cases than knowing the exact number.
印度尼西亚的Covid-19案例在时间系列接近Exponential Smoothing法的过程中增加了Covid-19案例
2019冠状病毒病大流行从2020年开始在印度尼西亚出现。为了了解情况的发展,需要进行良好的计算。预测系统可以帮助分析有关积极原因、治疗和死亡的准确数据。正确的预测或预测可以回答将会发生的影响问题,预测将为政府和社会提供一个概述,以便希望相关各方能够为未来的影响做好准备,甚至减少病例的增长。本研究采用指数平滑法进行预测计算。这种方法虽然简单,但在作出准确预测方面很有效。所使用的预测数据来自印度尼西亚政府,并假设这些数据是有效和可靠的。根据对印度尼西亚新冠肺炎新增病例的预测研究,最佳α (α)值为0.33,SSE为1048027939。这表明病例数量正在增加。本研究中使用时间序列方法和SES方法的预测结果更适合于预测病例增长百分比,而不是知道确切的数字。
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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