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Covid Bayesian Analysis

This project uses Bayesian methods and probabilistic programming to analyze the COVID-19 pandemic. It estimates effective reproduction rate and daily new cases for Hong Kong. The data is obtained from DATA.GOV.HK.

The main idea is based on rtlive and k-sys/covid-19 by Thomas Wiecki and Kevin Systrom. The model is a State Space Model with Gaussian random walk prior, implemented in PyMC.

A few plots are generated to visualize the results. Note that time series plots are mostly in aspect ratio 21:9 for better visualization.[1][2]

Effective Production Rate

Daily New Cases

trace plot

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