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Published inJan 2024
Reading LevelExpert
PublisherPackt
ISBN-139781805127161
Edition3rd Edition
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Osvaldo Martin
Osvaldo Martin
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Osvaldo Martin

Osvaldo Martin is a researcher at CONICET, in Argentina. He has experience using Markov Chain Monte Carlo methods to simulate molecules and perform Bayesian inference. He loves to use Python to solve data analysis problems. He is especially motivated by the development and implementation of software tools for Bayesian statistics and probabilistic modeling. He is an open-source developer, and he contributes to Python libraries like PyMC, ArviZ and Bambi among others. He is interested in all aspects of the Bayesian workflow, including numerical methods for inference, diagnosis of sampling, evaluation and criticism of models, comparison of models and presentation of results.
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10.8 Effective Sample Size (ESS)

MCMC samples can be correlated. The reason is that we use the current position to generate a new position and we accept or reject the next position taking into account the old position. This dependency is usually lower for well-tuned modern methods, such as Hamiltonian Monte Carlo, but it can be high. We can compute and plot the autocorrelation with az.plot_autocorrelation. But usually, a more useful metric is to compute the Effective Sample Size (ESS). We can think of this number as the number of useful draws we have in our sample. Due to autocorrelation, this number is usually going to be lower than the actual number of samples. We can compute it using the az.ess function (see Table 10.2). The ESS diagnostic is also computed by default with the az.summary function and optionally with az.plot_forest (using the ess=True argument).

a b0 b1 b2 b3 b4 b5 b6 b7 b8 b9
model_cm 14 339 3893 5187 4025 5588 4448 4576 4025 4249 4973
model_ncm 2918 4100 4089...
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Bayesian Analysis with Python - Third Edition
Published in: Jan 2024Publisher: PacktISBN-13: 9781805127161

Author (1)

author image
Osvaldo Martin

Osvaldo Martin is a researcher at CONICET, in Argentina. He has experience using Markov Chain Monte Carlo methods to simulate molecules and perform Bayesian inference. He loves to use Python to solve data analysis problems. He is especially motivated by the development and implementation of software tools for Bayesian statistics and probabilistic modeling. He is an open-source developer, and he contributes to Python libraries like PyMC, ArviZ and Bambi among others. He is interested in all aspects of the Bayesian workflow, including numerical methods for inference, diagnosis of sampling, evaluation and criticism of models, comparison of models and presentation of results.
Read more about Osvaldo Martin