Bayesian Statistics
Course code ST406046
Lecturers
dr. B.J.K. Kleijn
Course description and goals
To understand the basic properties of Bayesian methods; to
be able to apply this knowledge to statistical questions; to
know the extent (and limitations) of conclusions based thereon.
Frequentist statistics is based on the assumption that the
observation is random and its distribution is unknown but
fixed. Bayesian statistical methods are based on the principle
that both observations and distributions are random. A Bayesian
procedurerequires specification of a statistical model with a
so-called prior distribution; the posterior distribution is a
version of the prior that is corrected by the observation. In
this course, we introduce Bayesian methods for a variety of
statistical problems starting with some basic examples. We
consider basic properties of the procedure, choice of the prior
by objective and subjective criteria, Bayesian inference, some
decision theory and some model selection. In addition,
non-parametric Bayesian modelling is considered, posterior
asymptotic behaviour is discussed, e.g. posterior consistency,
rates of contraction and the posterior limit shape and the
Bernstein-Von Mises theorem..