Bayesian variable selection is one of the popular topics in modern day statistics. It is an important tool for high dimensional statistics, where the number of model parameters is greater than the number of observations. Several Bayesian models have been proposed for variable selection. However, a convincing robust Bayesian approach is yet to be investigated. Here in this work, we investigate sensitivity analysis over a simplex of probability measures. We sample from this simplex to get an inclusion probability of each variable. The sensitivity analysis gives us a set of posteriors instead of a single posterior. This set of posteriors gives us a behaviour of the model parameters with respect to different prior elicitations resulting in robu...
R.J. Owen (1975) proposed an approximate empirical Bayes procedure for item selection in adaptive te...
Empirical evidence shows that naive Bayesian classifiers perform quite well compared to more sophist...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Bayesian variable selection is one of the popular topics in modern day statistics. It is an importan...
ABSTRACTObjectiveTo give guidance in defining probability distributions for model inputs in probabil...
The process of building a Bayesian network model is often a bottleneck in applying the Bayesian netw...
We examine situations where interest lies in the conditional association between outcome and exposur...
Summary: We examine situations where interest lies in the conditional association between out-come a...
Robustness has always been an important element of the foundation of Statistics. However, it has onl...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
In principle, the Bayesian approach to model selection is straightforward. Prior probability distrib...
For the problem of model choice in linear regression, we introduce a Bayesian adap-tive sampling alg...
In modern statistical and machine learning applications, there is an increasing need for developing ...
Summary. In many areas of science and technology, mathematical models are built to simu-late complex...
R.J. Owen (1975) proposed an approximate empirical Bayes procedure for item selection in adaptive te...
Empirical evidence shows that naive Bayesian classifiers perform quite well compared to more sophist...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Bayesian variable selection is one of the popular topics in modern day statistics. It is an importan...
ABSTRACTObjectiveTo give guidance in defining probability distributions for model inputs in probabil...
The process of building a Bayesian network model is often a bottleneck in applying the Bayesian netw...
We examine situations where interest lies in the conditional association between outcome and exposur...
Summary: We examine situations where interest lies in the conditional association between out-come a...
Robustness has always been an important element of the foundation of Statistics. However, it has onl...
In health sciences, identifying the leading causes that govern the behaviour of a response variable ...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
In principle, the Bayesian approach to model selection is straightforward. Prior probability distrib...
For the problem of model choice in linear regression, we introduce a Bayesian adap-tive sampling alg...
In modern statistical and machine learning applications, there is an increasing need for developing ...
Summary. In many areas of science and technology, mathematical models are built to simu-late complex...
R.J. Owen (1975) proposed an approximate empirical Bayes procedure for item selection in adaptive te...
Empirical evidence shows that naive Bayesian classifiers perform quite well compared to more sophist...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...