Small Timescaled Data for Covid-19 Prediction with RNN-LSTM in Tangerang Regency

Sagita Sasmita Wijaya, Marlinda Vasty Overbeek
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Abstract

Throughout the pandemic, many people have become familiarised with the new type of virus that has been spreading throughout the world, called the Coronavirus. On the 2nd of March, the year 2020, the Indonesian government had announced the identification of first Covid-19 case in Indonesia. With the arrival of Covid-19, and its spreading across all the provinces of Indonesia, the number of positive cases keeps growing even in the present day. Tangerang Regency is one of the areas that has opaqued citizens in the Banten Province. The purpose of this research is to discuss how to predict the sum of Covid-19 cases in the Tangerang Regency using the RNN-LSTM method. Although this method is very eloquent if used to perform a sequential task, its complexity and loss of gradient can make this model difficult to be trained, hence resulting in the use of the Long Short-Term Memory (LSTM) to reduce these weaknesses and help the RNN to look back on past data. This research uses Python as the programming language and Jupyter Notebook for the visualization of the results of the prediction. Therefore, the prediction model has been evaluated using various computational methods, such as RMSE with its error percentage of 0.05, and MSE and MAE with the same error percentage of 0.03 with the loss of their models being 9.6793e-04.
利用 RNN-LSTM 对坦格朗地区 Covid-19 进行预测的小时间尺度数据
在整个疫情中,许多人都熟悉了一种在全球蔓延的新型病毒,即冠状病毒。2020 年 3 月 2 日,印度尼西亚政府宣布在印度尼西亚发现首例 Covid-19 病例。随着 Covid-19 的到来和在印尼各省的传播,阳性病例的数量至今仍在不断增加。Tangerang 摄政区是万丹省有不透明公民的地区之一。本研究的目的是讨论如何使用 RNN-LSTM 方法预测坦格朗地区 Covid-19 案件的总和。虽然这种方法在执行连续任务时非常有效,但其复杂性和梯度损失会使模型难以训练,因此需要使用长短期记忆(LSTM)来减少这些弱点,并帮助 RNN 回顾过去的数据。本研究使用 Python 作为编程语言,并使用 Jupyter Notebook 对预测结果进行可视化。因此,预测模型采用了多种计算方法进行评估,如误差率为 0.05 的 RMSE,误差率为 0.03 的 MSE 和 MAE,其模型损失为 9.6793e-04。
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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