Analysis of the Changes in 2019-nCov Before and After the Implementation of the "Required Swab PCR-Test for Entry into West Kalimantan via Air Transport" Policy

N. M. Huda, Nurfitri Imroah
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Abstract

Implementing policies during the 2019-nCov pandemic are expected to reduce the number of cases added every day. West Kalimantan is one of the provinces that implements a policy of obliging to include negative results on the PCR-test swab every time they use air transportation to West Kalimantan. In this study, we wanted to know whether there were differences in data behavior before and after implementing the policy. These differences can be analyzed simply by looking at the descriptive statistics of the data. Furthermore, in this study, a time series analysis was also carried out, and the data patterns and the suitable models representing the data. Time series analysis is also needed to predict the next 5 days related to the addition of 2019-nCov cases in West Kalimantan. In modeling, modifications have been made by partitioning the data into two data, namely data before the policy is implemented and the rest is data after the policy is implemented. The result shows that the suitable model for before and after the policy is applied is ARIMA (1,0,0) and ARIMA (7,0,0)(1,0,0)7, respectively. This model shows a better performance in translating problems than using the entire data as input in modeling. The smaller MSE value indicates this than using the ARIMA model (1,0,0) for the entire data (without partition). Therefore, in the prediction stage, a model with partitioned data is used. The results showed that there was a decrease in daily cases in the next five days.
“西加里曼丹航空入境强制棉签pcr检测”政策实施前后2019-nCov的变化分析
在2019-nCov大流行期间实施政策,预计将减少每天新增病例的数量。西加里曼丹是执行一项政策的省份之一,该政策要求每次乘坐飞机前往西加里曼丹时,必须将pcr测试拭子的阴性结果包括在内。在本研究中,我们想知道政策实施前后的数据行为是否存在差异。这些差异可以简单地通过查看数据的描述性统计来分析。此外,本研究还进行了时间序列分析,确定了数据的模式和合适的模型来代表数据。还需要进行时间序列分析,以预测未来5天与西加里曼丹新增2019-nCov病例相关的情况。在建模中,通过将数据划分为两个数据进行了修改,即策略实施前的数据和策略实施后的数据。结果表明,策略应用前后的合适模型分别为ARIMA(1,0,0)和ARIMA(7,0,0)(1,0,0)7。该模型在转换问题时比在建模中使用整个数据作为输入表现出更好的性能。较小的MSE值比使用ARIMA模型(1,0,0)对整个数据(没有分区)表示这一点。因此,在预测阶段,采用数据分区模型。结果显示,在接下来的五天里,每天的病例有所减少。
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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