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contactmodel / Covid19 Japan Reff

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Real-time estimation of the effective reproduction number of COVID-19 in Japan

Code scripts used for simulations Sung-mok Jung, Andrei R. Akhmetzhanov, Kenji Mizumoto, Hiroshi Nishiura

Data used for simulations is available in the data-folder. The simulations were done using R (version 4.0). The results can be found in the results-folder.

Scripts

Representing the data

Main analysis


Thank you for your interest to our work.

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