Dear all,
the STREAM group (https://www.unive.it/pag/16818/)
of the Ca’ Foscari university invites to
STATISTICAL REFLECTIONS
Half-day Workshop on Statistical Methods
Venice May 22, 2024
Ca’ Foscari University
Scientific Campus
Aula Delta 1B
Via Torino 155
Venezia Mestre
Program:
- 14:00
David Firth (University of Warwick): Compositional
quasi-likelihood and logit models
- 14:45
Ioannis Kosmidis (University of Warwick): Consistent, tuning-free
model selection in regression problems
- 15:30
Omiros Papaspiliopoulos (Bocconi University): Functional
estimation of the marginal likelihood
Abstracts:
Professor David Firth
University of Warwick, UK
Compositional quasi-likelihood and logit models
A composition vector describes the relative sizes of parts of a
thing. Some important modern application areas are microbiome
analysis, time-use analysis and archaeometry (to name just three).
We develop model-based analysis of composition, through the first
two moments of measurements on their original scale. In current
applied work the most-used route to compositional data analysis,
following an approach introduced by the late John Aitchison in the
1980s, is based on contrasts among log-transformed measurements.
The quasi-likelihood model framework developed here provides a
general alternative with several advantages. These include
robustness to secondary aspects of model specification, stability
when there are zero-valued or near-zero measurements in the data,
and more direct interpretation. Linear models for log-contrast
transformed data are replaced by generalized linear models with
logit link, and variance-covariance estimation is straightforward
via suitably standardized residuals. Joint work with Fiona Sammut,
University of Malta.
Professor Ioannis Kosmidis
University of Warwick, UK
Consistent, tuning-free model selection in regression problems
We present a family of consistent model selection procedures
for regression problems, which appropriately threshold readily
available statistics after estimating the model with all covariate
information. The model selection procedures rely only on standard
assumptions about information accumulation that guarantee the
typically expected asymptotic properties of the estimators (e.g.,
consistency) and require neither the selection of tuning
parameters nor the fitting of all possible models. We apply our
thresholding methodology in widely used statistical models (e.g.
generalized linear models and beta regression), demonstrate that
it is easily implementable as part of the standard maximum
likelihood output, and compare its performance to existing
techniques, illustrating its effectiveness. Joint work with
Patrick Zietkiewicz, University of Warwick.
Professor Omiros Papaspiliopoulos
Bocconi University, Italy
Functional estimation of the marginal likelihood
We consider the problem of exploring the marginal likelihood of
low-dimensional hyperparameters from high-dimensional Bayesian
hierarchical models. We provide a unified framework that connects
seemingly unconnected approaches to estimating normalizing
constants, including the Vardi estimator, the umbrella sampling
and the Gibbs sampler. The framework requires Monte Carlo sampling
from the posteriors of the high-dimensional parameters for
different values of the hyperparameters on a lattice. We establish
a surprising reproducing property that leads to a functional
estimator of the marginal likelihood and establish consistency
both fixed-lattice and lattice-infill consistency. The resultant
method is highly practical, black-box with theoretical guarantees.
Best regards,
Carlo Gaetan
--
-
Dipartimento di Scienze Ambientali, Informatica e Statistica - DAIS
Università Ca' Foscari - Venezia
Z.A12 - Edificio Zeta
Via Torino, 155
I-30172 Mestre (VE)
ITALY
phone: ++39 041 234 8404
e-mail:[gaetan"at"unive"dot"it]
web:[http://www.dais.unive.it/~gaetan]
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