We present a general framework for defining priors on model structure and sampling from the posterior using the Metropolis-Hastings algorithm. The key idea is that structure priors are defined via a probability tree and that the proposal mechanism for the Metropolis-Hastings algorithm operates by traversing this tree, thereby defining a cheaply computable acceptance probability. We have applied this approach to Bayesian net structure learning using a number of priors and tree traversal strategies. Our results show that these must be chosen appropriately for this approach to be successful
Abstract. Graphical model learning and inference are often performed using Bayesian techniques. In p...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This is a set of notes, summarizing what we talked about in the 10th recitation. They are not meant ...
We present a general framework for defining priors on model structure and sampling from the posterio...
We present a general framework for defining priors on model structure and sampling from the posterio...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
Dynamic models extend state space models to non--normal observations. This paper suggests a specific...
A general method for defining informative priors on statistical models is presented and applied sp...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
We propose prior distributions for all parts of the specification of a Markov mesh model. In the for...
We present methods based on Metropolis-coupled Markov chain Monte Carlo (MC3) and annealed importanc...
Algorithms for inferring the structure of Bayesian networks from data have become an increasingly po...
Trees have long been used as a flexible way to build regression and classification models for comple...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
Trees have long been used as a flexible way to build regression and classification models for comple...
Abstract. Graphical model learning and inference are often performed using Bayesian techniques. In p...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This is a set of notes, summarizing what we talked about in the 10th recitation. They are not meant ...
We present a general framework for defining priors on model structure and sampling from the posterio...
We present a general framework for defining priors on model structure and sampling from the posterio...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
Dynamic models extend state space models to non--normal observations. This paper suggests a specific...
A general method for defining informative priors on statistical models is presented and applied sp...
This thesis consists of four papers studying structure learning and Bayesian inference in probabilis...
We propose prior distributions for all parts of the specification of a Markov mesh model. In the for...
We present methods based on Metropolis-coupled Markov chain Monte Carlo (MC3) and annealed importanc...
Algorithms for inferring the structure of Bayesian networks from data have become an increasingly po...
Trees have long been used as a flexible way to build regression and classification models for comple...
This paper presents and evaluates an approach to Bayesian model averaging where the models are Bayes...
Trees have long been used as a flexible way to build regression and classification models for comple...
Abstract. Graphical model learning and inference are often performed using Bayesian techniques. In p...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This is a set of notes, summarizing what we talked about in the 10th recitation. They are not meant ...