When it is acknowledged that all candidate parameterised statistical models are misspecified relative to the data generating process, the decision maker (DM) must currently concern themselves with inference for the parameter value minimising the Kullback–Leibler (KL)-divergence between the model and this process (Walker, 2013). However, it has long been known that minimising the KL-divergence places a large weight on correctly capturing the tails of the sample distribution. As a result, the DM is required to worry about the robustness of their model to tail misspecifications if they want to conduct principled inference. In this paper we alleviate these concerns for the DM. We advance recent methodological developments in general Bayes...
Singapore MOE Academic Research Fund Tier 3Newer version at http://www.mysmu.edu/faculty/yujun/Resea...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
In model selection problems, robustness is one important feature for selecting an adequate model fro...
When it is acknowledged that all candidate parameterised statistical models are misspecified relativ...
When it is acknowledged that all candidate parameterised statistical models are misspecified relativ...
Version 17/04/2008 This article compares traditional Model Selection Criteria with the recently prop...
We introduce objective proper prior distributions for hypothesis testing and model selection based o...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
We propose a framework for general Bayesian inference. We argue that a valid update of a prior belie...
This paper uses a decision theoretic approach for updating a probability measure representing belief...
Abstract: The aim of this work is to develop a new model selection criterion using a general discrep...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
This paper analyses the Contrastive Divergence algorithm for learning statistical parameters. We rel...
Approximating a divergence between two probability distributions from their sam-ples is a fundamenta...
In this note we introduce some divergence-based model selection criteria. These criteria are defined...
Singapore MOE Academic Research Fund Tier 3Newer version at http://www.mysmu.edu/faculty/yujun/Resea...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
In model selection problems, robustness is one important feature for selecting an adequate model fro...
When it is acknowledged that all candidate parameterised statistical models are misspecified relativ...
When it is acknowledged that all candidate parameterised statistical models are misspecified relativ...
Version 17/04/2008 This article compares traditional Model Selection Criteria with the recently prop...
We introduce objective proper prior distributions for hypothesis testing and model selection based o...
Model selection is of fundamental importance to high dimensional modelling featured in many contempo...
We propose a framework for general Bayesian inference. We argue that a valid update of a prior belie...
This paper uses a decision theoretic approach for updating a probability measure representing belief...
Abstract: The aim of this work is to develop a new model selection criterion using a general discrep...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
This paper analyses the Contrastive Divergence algorithm for learning statistical parameters. We rel...
Approximating a divergence between two probability distributions from their sam-ples is a fundamenta...
In this note we introduce some divergence-based model selection criteria. These criteria are defined...
Singapore MOE Academic Research Fund Tier 3Newer version at http://www.mysmu.edu/faculty/yujun/Resea...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
In model selection problems, robustness is one important feature for selecting an adequate model fro...