When mapping is formulated in a Bayesian framework, the need of specifying a prior for the environment arises naturally. However, so far, the use of a particular structure prior has been coupled to working with a particular representation. We describe a system that supports inference with multiple priors while keeping the same dense representation. The priors are rigorously described by the user in a domain-specific language. Even though we work very close to the measurement space, we are able to represent structure constraints with the same expressivity as methods based on geometric primitives. This approach allows the intrinsic degrees of freedom of the environment’s shape to be recovered. Experiments with simulated and real data sets wil...
In this paper we show how a user can influence recovery of Bayesian networks from a database by spec...
Bayesian methods offer the flexibility to both model uncertainty and incorporate domain knowledge in...
While probabilistic techniques have previously been investigated extensively for performing inferenc...
When mapping is formulated in a Bayesian framework, the need of specifying a prior for the environm...
ABSTRACT. A new class of prior models is proposed for Bayesian image analysis. This class of priors ...
Our goal is inference for shape-restricted functions. Our functional form consists of finite linear ...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
What is the best way to exploit extra data -- be it unlabeled data from the same task, or labeled da...
The design of models which are appropriate for specific tasks is an important activity in machine le...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
As the study of complex interconnected networks becomes widespread across disciplines, modeling the ...
A crucial aspect of mass mapping, via weak lensing, is quantification of the uncertainty introduced ...
A new approach to Bayesian reconstruction is introduced in which the prior probability distribution ...
The elicitation of prior beliefs about the structure of a Bayesian Network is a formal step of full-...
We describe the application of model inference based on reference priors to two concrete examples in...
In this paper we show how a user can influence recovery of Bayesian networks from a database by spec...
Bayesian methods offer the flexibility to both model uncertainty and incorporate domain knowledge in...
While probabilistic techniques have previously been investigated extensively for performing inferenc...
When mapping is formulated in a Bayesian framework, the need of specifying a prior for the environm...
ABSTRACT. A new class of prior models is proposed for Bayesian image analysis. This class of priors ...
Our goal is inference for shape-restricted functions. Our functional form consists of finite linear ...
We investigate the choice of default priors for use with likelihood for Bayesian and frequentist inf...
What is the best way to exploit extra data -- be it unlabeled data from the same task, or labeled da...
The design of models which are appropriate for specific tasks is an important activity in machine le...
Bayesian methods are extensively used to analyse geophysical data sets. A critical and somewhat over...
As the study of complex interconnected networks becomes widespread across disciplines, modeling the ...
A crucial aspect of mass mapping, via weak lensing, is quantification of the uncertainty introduced ...
A new approach to Bayesian reconstruction is introduced in which the prior probability distribution ...
The elicitation of prior beliefs about the structure of a Bayesian Network is a formal step of full-...
We describe the application of model inference based on reference priors to two concrete examples in...
In this paper we show how a user can influence recovery of Bayesian networks from a database by spec...
Bayesian methods offer the flexibility to both model uncertainty and incorporate domain knowledge in...
While probabilistic techniques have previously been investigated extensively for performing inferenc...