[Statlist] talks on statistics
Christina Kuenzli
kuenzli at stat.math.ethz.ch
Tue May 13 16:52:25 CEST 2008
ETH and University of Zurich
Proff.
A.D. Barbour - P. Buehlmann - F. Hampel - L. Held
H.R. Kuensch - M. Maathuis - S. van de Geer
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We are glad to announce the following talks
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Friday, May 16, 2008, 15.15-17.30, LEO C6
Non-asymptotic variable identification via the Lasso
and the elastic net
Florentina Bunea, Florida State University
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Friday, May 23, 2008, 15.15-16.00, LEO C6
Conditioned Limit Theorems:
Does the Story End with a Bang or a Whimper?
Sidney Resnick, Cornell University, Ithaca
Multivariate extreme value theory assumes a multivariate domain of
attraction condition for the distribution of a random vector necessitating
that each component satisfy a marginal domain of attraction condition.
Heffernan and Tawn (2004) followed by Heffernan and Resnick (2007)
developed an approximation to the joint distribution of the random vector by
conditioning that one of the components be extreme. Prior papers left
unresolved the consistency of different models obtained by conditioning on
different components being extreme and we provide understanding of this
issue. We also clarify the relationship between the conditional
distributions and multivariate extreme value theory. We discuss conditions
under which the two models are the same and when one can extend the
conditional model to the extreme value model. We also discuss the
relationship between the conditional extreme value model and standard
regular variation on different cones.
Joint work with B. Das (Cornell) and J. Heffernan (Lancaster)
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Friday, May 23, 2008, 16.15-17.00, LEO C6
Design and analysis of time to pregnancy
Niels Keiding, University of Copenhagen, DK
Time to pregnancy is the duration from a couple starts trying to become
pregnant until they succeed and is considered one of the most direct
methods to measure natural fecundity in humans. Statistical tools for
designing and analysing time to pregnancy studies belong to the general
area of survival analysis, but several special features require special
attention. I will survey prospective designs, including historically
prospective and prevalent cohort, retrospective (pregnancy-based)
designs, and focus particularly on the possibilities to start from a
cross-sectional sample of couples currently trying to be come
pregnant. The latter case corresponds to using the backward recurrence
time as basis for the inference, and here the preferable statistical
model turns out to be the accelerated failure time model.
The talk will be illustrated by examples from our own experience.
References:
Keiding, N., Kvist, K., Hartvig, H., Tvede, M. & Juul,
S. (2002). Estimating time to pregnancy from current durations in a
cross-sectional sample. Biostatistics 3, 565-578.
Scheike, T. & Keiding, N. (2006). Design and analysis of time to
pregnancy. \textit{Stat. Meth. Med. Res. 15, 127-140.
_______________________________________________________
Christina Kuenzli <kuenzli at stat.math.ethz.ch>
Seminar fuer Statistik
Leonhardstr. 27, LEO D11 phone: +41 (0)44 632 3438
ETH-Zentrum, fax : +41 (0)44 632 1228
CH-8092 Zurich, Switzerland http://stat.ethz.ch/~
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