AUEB SEMINARS - 16/6/2016: Confidence intervals after selection by Akaike's information criterion
Wed 11 May 2016 - 20:09
ΚΥΚΛΟΣ ΣΕΜΙΝΑΡΙΩΝ ΣΤΑΤΙΣΤΙΚΗΣ – ΜΑΙΟΣ 2016
Gerda Claeskens
Research Centre for Operations Research and Business Statistics (ORSTAT),
University of Leuven, Belgium
Confidence intervals after selection by Akaike's information criterion
ΔΕΥΤΕΡΑ 16/5/2016
13:00
ΑΙΘΟΥΣΑ 607, 6ος ΟΡΟΦΟΣ,
ΚΤΙΡΙΟ ΜΕΤΑΠΤΥΧΙΑΚΩΝ ΣΠΟΥΔΩΝ
(ΕΥΕΛΠΙΔΩΝ & ΛΕΥΚΑΔΟΣ)
ΠΕΡΙΛΗΨΗ
Once a model is selected, say by the Akaike information criterion, we often wish to use the selected model for inference. A correct procedure takes the uncertainty of the selection process into account. For the case of selection by the Akaike information criterion, we use its overselection property to obtain the asymptotic distribution of parameter estimators in the selected model. It turns out that the limiting distribution depends on which models are considered in the selection, as well as on the smallest such model that is overparametrized, without requiring the true model to be known. A simulation scheme allows to obtain the specific distributions of estimators after AIC selection, and provides correct confidence regions. This is joint work with A. Charkhi.
AUEB STATISTICS SEMINAR SERIES – MAY 2016
Gerda Claeskens
Research Centre for Operations Research and Business Statistics (ORSTAT),
University of Leuven, Belgium
Confidence intervals after selection by Akaike's information criterion
MONDAY 16/5/2016
13:00
ROOM 607, 6th FLOOR,
POSTGRADUATE STUDIES BUILDING
(EVELPIDON & LEFKADOS)
ABSTRACT
Once a model is selected, say by the Akaike information criterion, we often wish to use the selected model for inference. A correct procedure takes the uncertainty of the selection process into account. For the case of selection by the Akaike information criterion, we use its overselection property to obtain the asymptotic distribution of parameter estimators in the selected model. It turns out that the limiting distribution depends on which models are considered in the selection, as well as on the smallest such model that is overparametrized, without requiring the true model to be known. A simulation scheme allows to obtain the specific distributions of estimators after AIC selection, and provides correct confidence regions. This is joint work with A. Charkhi.
- AUEB SEMINARS - 30/3/2016: Information fusion approach using signal quality indices, and information-theoretic feature selection: practical approaches and applications
- AUEB SEMINARS - 22/6/2016: Scalable Bayesian variable selection and model averaging under block orthogonal design
- AUEB Stats Seminars Online Premiere: Confidence Intervals for Nonparametric Empirical Bayes Analysis by N. Ignatiadis (Stanford)
- AUEB SEMINARS - 19/6/2015: Bayesian Model Selection Under Heredity Constraints
- AUEB Stats Seminars 25/2/2022: Subset selection for big data regression: an improved approach
Permissions in this forum:
You cannot reply to topics in this forum