Modeling and Analysis using Monte Carlo Methods - A Short Course

By George Casella

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Course Description=20


Monte Carlo statistical methods, particularly those based on Markov
chains, have now matured to be part of the standard set of techniques
used by statisticians. This short course is intended to serve as an
introduction to both the application and underlying workings of these
techniques, and to illustrate how Monte Carlo methods can enhance
statistical practice through illustrations of the application of
simulation based techniques to applied statistical problems.

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The course will begin with the basics of random number generation and
illustration of how a simulation approach can often supply easy methods
for solving difficult problems. We will explore techniques for Monte
Carlo integration and optimization, and then ontinue with the more
recent Markov chain Monte Carlo techniques such as the Gibbs sampler and
the Metropolis-Hastings Algorithm. We will use examples from life
sciences, engineering, biostatistics, and many more. We will also have a
detailed treatment of missing data models and analyses, with algorithms
such as EM and Data Augmentation, and again provide examples and
analyses from a variety of applications.

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We strongly urge each student to bring a laptop computer that has a copy
of both R and WinBUGS installed on it. There will be a number of
examples worked out. (WinBUGS is available free of charge, and can be
downloaded from
http://www.mrc-bsu.cam.ac.uk/bugs/winbugs/contents.shtml.

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"R" is also free, available at  http://www.r-project.org/.)

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We will use examples both from Monte Carlo Statistical Methods, Second
Edition,  by Robert and Casella (Springer-Verlag 2004) and other real
life sources.

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There is no required text for the course. Copies of all course slides
and example output discussed will be provided

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Main topics covered are:

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   1.Introduction to random variable generation.

   2.Monte Carlo techniques for integration and optimization.

   3.The basics of Markov chain Monte Carlo.

   4.Modeling data in a hierarchy.

   5.Applications of Gibbs sampling and the Metropolis-Hastings
Algorithm.

   6.Diagnosing the fit of the model.

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Who should come?

We do not assume that the student has any familiarity with Monte Carlo
techniques (such as random variable generation), or with any Markov
chain theory. We do assume that the reader has familiarity with basic
theoretical statistical concepts such as densities, distributions,
probability and expectations, the Law of Large Numbers and the Central
Limit Theorem, and maximum likelihood estimation. Hierarchical models
are often analyzed using Bayesian methods. Familiarity with these
methods is desirable but not essential, as the basics will be covered.

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Some necessary background can be gained from the text Statistical
Inference by Casella and Berger (Duxbury 2001), and much of the course
related material will be based on the text Monte Carlo Statistical
Methods .

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The Instructor

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George Casella is Distinguished Professor of Statistics at the
University of Florida. He is active in many aspects of statistics
including decision theory, statistical confidence, environmental
statistics, statistical genomics and the theory and application of Monte
Carlo and other computationally-intensive methods. He is a Fellow of the
ASA and the Institute of Mathematical Statistics (IMS), has served as
Theory and Methods Editor of JASA, Executive Editor of Statistical
Science, and is currently Joint Editor of the Journal of the Royal
Statistical Society, Series B.  He has authored six textbooks:=20

Statistical Inference, Second Edition, 2001, with Roger Berger;=20

Variance Components, 1992, with S. R. Searle and C. E. McCulloch;=20

Theory of Point Estimation, Second Edition, 1998, with Erich Lehmann,=20

Monte Carlo Statistical Methods, Second Edition 2004, with Christian
Robert,=20

Statistical Genomics of Complex Traits (2007), with R. Wu and C. X. Ma,
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Statistical Design (2008).

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Registration=20


Enrollment is restricted to the first 30 registrants. The course
registration is $500 on or before April 10, 2008, and $575 after April
10, 2008. Registration may be completed by contacting Robyn Crawford by
e-mail at [EMAIL PROTECTED] or phone at 352.392.1941, ext 218.

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Date and Location


The workshop will be held April 24-25, 2008.  The location on the UF
campus will be announced soon.=20

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Additional Information=20


If you have additional questions about course content, please contact
George Casella ([EMAIL PROTECTED]). For questions about course
logistics, please contact Carol Rozear ([EMAIL PROTECTED]) or Robyn
Crawford ([EMAIL PROTECTED]).

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