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Source code accompanying Jung et al. "Predicting the effective reproduction number of COVID-19: Inference using human mobility, temperature, and risk awareness".

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SungmokJung/Prediction_Rt_COIVD19

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Prediction_Rt_COIVD19

Source code accompanying Jung et al. "Predicting the effective reproduction number of COVID-19: Inference using human mobility, temperature, and risk awareness".

Main files

prediction.ipynb :Jupyter Notebook to reproduce the analysis in the paper

Licence

MIT

Dependencies

  • R ver. 4.0.3
  • Jupyter Notebook ver. 4.5.0

Authors

Sung-mok Jung, Akira Endo, Andrei R. Akhmetzhanov, and Hiroshi Nishiura

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Source code accompanying Jung et al. "Predicting the effective reproduction number of COVID-19: Inference using human mobility, temperature, and risk awareness".

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