The main theme of this monograph is "comparative statistical inference.
" While the topics covered have been carefully selected (they are, for
example, restricted to pr- lems of statistical estimation), my aim is to
provide ideas and examples which will assist a statistician, or a
statistical practitioner, in comparing the performance one can expect
from using either Bayesian or classical (aka, frequentist) solutions
in - timation problems. Before investing the hours it will take to read
this monograph, one might well want to know what sets it apart from
other treatises on comparative inference. The two books that are closest
to the present work are the well-known tomes by Barnett (1999) and Cox
(2006). These books do indeed consider the c- ceptual and methodological
differences between Bayesian and frequentist methods. What is largely
absent from them, however, are answers to the question: "which - proach
should one use in a given problem?" It is this latter issue that this
monograph is intended to investigate. There are many books on Bayesian
inference, including, for example, the widely used texts by Carlin and
Louis (2008) and Gelman, Carlin, Stern and Rubin (2004). These books
differ from the present work in that they begin with the premise that a
Bayesian treatment is called for and then provide guidance on how a
Bayesian an- ysis should be executed. Similarly, there are many books
written from a classical perspective.