Please find enclosed the announcement of the 10th edition of
the ABS (Applied Bayesian Statistics) summer school. This year
the school will be held in the magnificent Villa del Grumello,
in Como (Italy), on the Lake Como shore.
Guido Consonni and Fabrizio Ruggeri
ABS13 Directors
--------------------------------------------------------------
Summer school on BAYESIAN METHODS FOR VARIABLE SELECTION WITH
APPLICATIONS TO HIGH-DIMENSIONAL DATA, Como, Italy
*******************************
* ABS13 *
*******************************
Applied Bayesian Statistics School
BAYESIAN METHODS FOR VARIABLE SELECTION WITH APPLICATIONS TO
HIGH-DIMENSIONAL DATA
June, 17 - 21, 2013 - Villa del Grumello, Como, Italy
Lecturer
Professor Marina VANNUCCI
Department of Statistics, Rice University, Houston, USA
Programme and registration details are available at
>>>> www.mi.imati.cnr.it/conferences/abs13.html <<<<
Details on accommodation will be posted in few days.
Interested people are invited to contact the ABS13 Secretariat at
[log in to unmask]
--------------------- COURSE OUTLINE ----------------------------------------
This course will cover Bayesian methods for variable selection and
applications. Various modeling settings will be considered, starting with the
widely used linear regression models. Bayesian methods for variable selection
have been successfully employed in linear setting models, making problems with
hundreds of regressor variables and a few samples quite feasible. These
methods use mixing priors on the regression coefficients to do the selection
and fast Markov Chain Monte Carlo stochastic search approaches to sample from
posterior distributions. Extensions of the methodologies to other linear
settings will also be considered, in particular to handle categorical
responses, via probit models, and survival data, via accelerated failure time
models. Applications of the methodologies will focus on high-dimensional data
from genomic studies that use high-throughtput expression levels of thousands
of genes. For such applications, models and inferential algorithms will be
modified to incorporate specific information, such as data substructure and
biological knowledge on gene functions. The last part of the course will
address variable selection for a different modeling setting, that is mixture
models, both unsupervised (for sample clustering) and supervised (for
discriminant analysis). In mixture models variable selection is achieved via
latent binary vectors that identify the discriminating variables and are
updated via a Metropolis algorithm. In the clustering setting, inference on
the sample allocations is obtained either via reversible jump MCMC or
split-merge MCMC techniques. Performances of the methodologies will be
illustrated on simulated data and on DNA microarray data. The course will end
with a brief description of additional topics, such as the use of variable
selection priors in nonlinear settings, via Gaussian processes, and for the
analysis of functional data.
The school will make use of lectures, practical sessions, software
demonstrations, informal discussion sessions and presentations of research
projects by school participants. The slides and background reading material
will be distributed to the students before the start of the course.
You may leave the list at any time by sending the command
SIGNOFF allstat
to [log in to unmask], leaving the subject line blank.
|