We develop a method to incorporate model uncertainty by model averaging in generalized linear models subject to multiple endogeneity and instrumentation. Our approach builds on a Gibbs sampler for the instrumental variable framework that incorporates model uncertainty in both outcome and instrumentation stages. Direct evaluation of model probabilities is intractable in this setting. However, we show that by nesting model moves inside the Gibbs sampler, a model comparison can be performed via conditional Bayes factors, leading to straightforward calculations. This new Gibbs sampler is slightly more involved than the original algorithm and exhibits no evidence of mixing difficulties. We further show how the same principle may be employed to e...
Abstract. Standard statistical practice ignores model uncertainty. Data analysts typically select a ...
Uncertainty about the choice of identifying assumptions is common in causal studies, but is often ig...
This article illustrates how variance in the predictive distribution of the profit objective functio...
This paper considers the instrumental variable regression model when there is uncertainty about the ...
Economic modeling in the presence of endogeneity is subject to model uncertainty at both the instrum...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
The paper develops a computational method to deal with some open issues related to Bayesian model av...
The method of model averaging has become an important tool to deal with model uncertainty, for examp...
This paper considers the instrumental variable regression model when there is uncertainty about the ...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
This paper develops the theoretical background for the Limited Information Bayesian Model Averaging ...
The method of model averaging has become an important tool to deal with model uncertainty, for exam...
We use Bayesian model averaging to analyze industry return predictability in the presence of model u...
The standard practice of selecting a single model from some class of models and then making inferenc...
Estimation in models with endogeneity concerns typically begins by searching for instruments. This s...
Abstract. Standard statistical practice ignores model uncertainty. Data analysts typically select a ...
Uncertainty about the choice of identifying assumptions is common in causal studies, but is often ig...
This article illustrates how variance in the predictive distribution of the profit objective functio...
This paper considers the instrumental variable regression model when there is uncertainty about the ...
Economic modeling in the presence of endogeneity is subject to model uncertainty at both the instrum...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
The paper develops a computational method to deal with some open issues related to Bayesian model av...
The method of model averaging has become an important tool to deal with model uncertainty, for examp...
This paper considers the instrumental variable regression model when there is uncertainty about the ...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
This paper develops the theoretical background for the Limited Information Bayesian Model Averaging ...
The method of model averaging has become an important tool to deal with model uncertainty, for exam...
We use Bayesian model averaging to analyze industry return predictability in the presence of model u...
The standard practice of selecting a single model from some class of models and then making inferenc...
Estimation in models with endogeneity concerns typically begins by searching for instruments. This s...
Abstract. Standard statistical practice ignores model uncertainty. Data analysts typically select a ...
Uncertainty about the choice of identifying assumptions is common in causal studies, but is often ig...
This article illustrates how variance in the predictive distribution of the profit objective functio...