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This will also be able how to use PyMC. Interesting topics include:
- Using preliz to choose priors (including using
pz.maxent
and.plot_interactive
- Using pymc machinery to get sample statistics as symbolic functions, for example stationary autocovariance matrix and IRF statistics
- Use
sample_prior_predictive
to show the effect of varying priors on different quantities of interest
Some of this can come from the 2nd half of the introduction to gEconpy notebook, which is way too bloated.
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documentationImprovements or additions to documentationImprovements or additions to documentationexamplesExample notebooksExample notebooks