40 research outputs found
Instrumental Variable Bayesian Model Averaging via Conditional Bayes Factors
We develop a method to perform model averaging in two-stage linear regression
systems subject to endogeneity. Our method extends an existing Gibbs sampler
for instrumental variables to incorporate a component of model uncertainty.
Direct evaluation of model probabilities is intractable in this setting. We
show that by nesting model moves inside the Gibbs sampler, model comparison can
be performed via conditional Bayes factors, leading to straightforward
calculations. This new Gibbs sampler is only slightly more involved than the
original algorithm and exhibits no evidence of mixing difficulties. We conclude
with a study of two different modeling challenges: incorporating uncertainty
into the determinants of macroeconomic growth, and estimating a demand function
by instrumenting wholesale on retail prices
Sparse covariance estimation in heterogeneous samples
Standard Gaussian graphical models (GGMs) implicitly assume that the
conditional independence among variables is common to all observations in the
sample. However, in practice, observations are usually collected form
heterogeneous populations where such assumption is not satisfied, leading in
turn to nonlinear relationships among variables. To tackle these problems we
explore mixtures of GGMs; in particular, we consider both infinite mixture
models of GGMs and infinite hidden Markov models with GGM emission
distributions. Such models allow us to divide a heterogeneous population into
homogenous groups, with each cluster having its own conditional independence
structure. The main advantage of considering infinite mixtures is that they
allow us easily to estimate the number of number of subpopulations in the
sample. As an illustration, we study the trends in exchange rate fluctuations
in the pre-Euro era. This example demonstrates that the models are very
flexible while providing extremely interesting interesting insights into
real-life applications
Robust FDI Determinants: Bayesian Model Averaging In The Presence Of Selection Bias
The literature on Foreign Direct Investment (FDI) determinants is remarkably diverse in terms of competing theories and empirical results. We utilize Bayesian Model Averaging (BMA) to resolve the model uncertainty that surrounds the validity of the competing FDI theories. Since the structure of existing FDI data is known to induce selection bias, we extend BMA theory to HeckitBMA to address model uncertainty in the presence of selection bias. We then show that more than half of the previously suggested FDI determinants are no longer robust and highlight theories that receive support from the data. In addition, our selection approach allows us to highlight that the determinants of margins of FDI (intensive and extensive) differ profoundly in the data, while FDI theories do not usually model this aspect explicitly.
Copula Gaussian graphical models and their application to modeling functional disability data
We propose a comprehensive Bayesian approach for graphical model
determination in observational studies that can accommodate binary, ordinal or
continuous variables simultaneously. Our new models are called copula Gaussian
graphical models (CGGMs) and embed graphical model selection inside a
semiparametric Gaussian copula. The domain of applicability of our methods is
very broad and encompasses many studies from social science and economics. We
illustrate the use of the copula Gaussian graphical models in the analysis of a
16-dimensional functional disability contingency table.Comment: Published in at http://dx.doi.org/10.1214/10-AOAS397 the Annals of
Applied Statistics (http://www.imstat.org/aoas/) by the Institute of
Mathematical Statistics (http://www.imstat.org