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Effectiveness of the public health measures to prevent the spread of COVID-19

机译:公共卫生措施的有效性,防止Covid-19的传播

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COVID-19 which has become a global pandemic, recently, has spread to hundreds of countries and territories. This pandemic spreads rapidly through human transmission. In order to reduce the spread of COVID-19, the government emerged several policies. Numerous public health measures can be implemented to counter the risk of an emerging outbreak with pandemic potential. Meanwhile, Jakarta and West Java are the regions with the most confirmed cases in Indonesia, the government announced Large-Scale Social Restrictions (PSBB) policy in both provinces. Many researchers conducted forecasting methods for modeling or predict the further number of cases of this pandemic. Forecasting is slightly hard because of those interventions. In this study, we involved some of neural network forecasting methods, including Multi-Layer Perceptron, Neural Network Auto-Regressive, and Extreme Learning Machine meanwhile neural networks become well-known at this time for forecasting the number of active, confirmed, recovered, death, and daily new cases in Jakarta and West Java. These methods are undertaking automatically without considering any factors that will be impacted the result as the reason that we assumed those factors have pursued the pattern of each case. The best model for all of the cases is the MLP (10,10) model. This intervention carried out by the government, namely PSBB, proved effective in reducing the spread of this pandemic in Jakarta and West Java. This can be seen from the results of the daily new cases which show a downward trend for both although still fluctuating.
机译:Covid-19已成为全球大流行,最近蔓延到数百个国家和地区。这种大流行通过人类传播迅速蔓延。为了减少Covid-19的传播,政府出现了几项政策。可以实施众多的公共卫生措施,以抵消具有大流行潜力的新出现爆发的风险。与此同时,雅加达和西爪哇省的地区是印度尼西亚案件最具确切的案件,政府宣布两省的大规模社会限制(PSBB)政策。许多研究人员对建模或预测这种流行病的进一步案例进行了预测方法。由于这些干预措施,预测略有困难。在这项研究中,我们涉及一些神经网络预测方法,包括多层的感知,神经网络自动回归和极端学习机,同时神经网络此时众所周知,以预测有效,确认,恢复的数量,雅加达和西爪哇省的死亡和日常新案例。这些方法在不考虑任何影响结果的情况下自动进行,因为我们认为这些因素追求每种案件的模式。所有情况的最佳模型是MLP(10,10)模型。政府,即PSBB开展的这种干预证明有效地减少了雅加达和西爪哇爪哇省这个大流行的传播。这可以从日常新案例的结果看出,虽然仍然波动,但虽然虽然仍然波动,但这两种新案例都显示出下降趋势。

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