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Why R? Foundation 2021-02-08 03:43:22

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On Thursday, February 25th at 7 pm UTC | 8 pm CET, as part of the Why R? Webinar series, we have the honour to host Paul Bürkner, Junior Research Group Leader at the Cluster of Excellence SimTech at the University of Stuttgart (Germany). Author of the R package brms and member of the Stan Development Team, Paul will explain how the R package provides an interface to fit Bayesian generalized (non-)linear multivariate multilevel models using Stan, a C++ package for performing full Bayesian inference.

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Webinar

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Talk

Speaker

brms: Bayesian Regression Models using Stan

The brms package provides an interface to fit Bayesian generalized (non-)linear multivariate multilevel models using Stan, a C++ package for performing full Bayesian inference. The formula syntax is very similar to that of the lme4 package to provide a familiar and simple interface for performing regression analyses. A wide range of response distributions are supported, allowing users to fit – among others – linear, robust linear, count data, survival, response times, ordinal, zero-inflated, and even self-defined mixture models all in a multilevel context. Further modeling options include non-linear and smooth terms, auto-correlation structures, censored data, missing value imputation, and quite a few more. In addition, all parameters of the response distribution can be predicted in order to perform distributional regression. Multivariate models, i.e., models with multiple response variables, can be fit as well. Prior specifications are flexible and explicitly encourage users to apply prior distributions that reflect their beliefs. Model fits can easily be assessed and compared with posterior predictive checks, cross-validation, and Bayes factors.

Sponsor

This event is part of a series sponsored by Jumping Rivers. For more information, check out the JR and WhyR partnership announcement.

Contact


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