Critical data analysis of COVID-19 spreading in Indonesia to measure the
readiness of new-normal policy
- URL: http://arxiv.org/abs/2011.07679v1
- Date: Mon, 16 Nov 2020 01:42:16 GMT
- Title: Critical data analysis of COVID-19 spreading in Indonesia to measure the
readiness of new-normal policy
- Authors: Muhammad Ariful Furqon, Nina Fadilah Najwa, Endah Septa Sintiya,
Erista Maya Safitri, Iqbal Ramadhani Mukhlis
- Abstract summary: Indonesia's government issued a large-scale social restrictions policy to prevent the spread of the COVID-19.
However, large-scale social restrictions policy impacted the economy of the Indonesian.
This study's objective is to measure Indonesia's readiness level after the large-scale social restrictions period towards the new-normal period.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: COVID-19 pandemic has become a global issue nowadays. Various efforts have
been made to break the chain of the spread of the COVID-19. Indonesia's
government issued a large-scale social restrictions policy to prevent the
spread of the COVID-19. However, large-scale social restrictions policy
impacted the economy of the Indonesian. After several considerations, the
Indonesian government implemented a new-normal policy, which regulates the
activities outside the home with strict health protocols. This study's
objective is to measure Indonesia's readiness level after the large-scale
social restrictions period towards the new-normal period. To specify the
readiness level, the measurement parameters required in the form of statistical
analysis and forecasting modeling. Based on the results of statistical analysis
and forecasting, over the past month, new confirmed cases increased more than
two times. Besides, the growth rate of new confirmed cases dramatically
increased rapidly compared to the prediction results. Therefore, the government
must review the new-normal policy again and emphasize economic factors and
think about health factors
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