A Bayesian Approach to Linear Mixed Models (LMM) in Python | Eduardo Coronado Sroka
There seems to be a general misconception that Bayesian methods are harder to implement than Frequentist ones. Sometimes this is true, but more often existing R and Python libraries can help simplify the process. By Eduardo Coronado Sroka: https://towardsdatascience.com/@ecoro... Read the full article here: https://towardsdatascience.com/a-baye... Twitter: / ecoronado92

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A Bayesian Approach to Linear Mixed Models (LMM) in R | Eduardo Coronado Sroka

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