skip to content

Mathematical Research at the University of Cambridge

 

The workflow of applied Bayesian statistics includes not just inference but also building, checking, and understanding fitted models. We discuss various live issues including prior distributions, data models, and computation, in the context of ideas such as the Fail Fast Principle and the Folk Theorem of Statistical Computing. We also consider some examples of Bayesian models that give bad answers and see if we can develop a workflow that catches such problems. For background, see here: http://www.stat.columbia.edu/~gelman/research/unpublished/Bayesian_Workf...

Further information

Time:

27Jun
Jun 27th 2025
14:00 to 15:00

Venue:

Seminar Room 1, Newton Institute

Speaker:

Andrew Gelman (Columbia University)

Series:

Isaac Newton Institute Seminar Series