Overview

After describing the fundamentals of Bayesian inference, this course will examine the specification of prior and posterior distributions, Bayesian decision theoretic concepts, the ideas behind Bayesian hypothesis tests, model choice and model averaging, and evaluate the capabilities of several common model types, such as hierarchical and mixture models. An important â€Ĥ For more content click the Read More button below.

Conditions for Enrolment

Must be enrolled in 5646 Graduate Diploma in Data Science or 8646 Master of Data Science.

Delivery

Fully online - Intensive

Fees

Pre-2019 Handbook Editions

Access past handbook editions (2018 and prior)