Data Recovery

It appears you may have used Coursicle on this device and then cleared your cookies. You can recover your data by answering these questions.

User's photo
User ID:

Your account no longer exists

Your user ID no longer exists. Please refresh the page. If the issue persists, please contact us at support@coursicle.com.

Dismiss

BIST 630 - Bayesian Inference

Description
This course examines essential aspects of the Bayesian approach. It includes Bayes theorem, decision theory, likelihood principles, exchangeability, de Finetti’s theorem, selection of prior distributions (conjugate, non-conjugate, reference), single-parameter models (binomial, poisson, normal), multi-parameter models (normal, multinomial, linear regression, general linear model, hierarchical regression), inference (exact, normal approximations, non-normal iterative approximations), computation (Monte Carlo, convergence diagnostics), and model diagnostics (Bayes factors, posterior predictive checks) as well as the Bayesian approaches to a variety of Biostatistics models using the inverse Bayes theorem related non-iterative sampling and MCMC. Section information text: Class meets in NRB W402.
Recent Professors
Recent Semesters
Spring 2023, Spring 2022, Spring 2021, Spring 2020, Spring 2019
Class Size
6
Credits
3
Usually Held
W (1:00pm-3:30pm)