Centered versus non-centered hierarchical models
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17:13
Effective sample size: representing the cost of dependent sampling
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32:09
The intuition behind the Hamiltonian Monte Carlo algorithm
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49:19
Bayesian Hierarchical Models
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21:05
What are divergent iterations and what to do about them?
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35:49
Hanna van der Vlis - Clusterf*ck: A Practical Guide to Bayesian Hierarchical Modeling in PyMC3
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18:58
An introduction to Gibbs sampling
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52:50
Tech talk: A practical introduction to Bayesian hierarchical modelling
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28:48