AbstractIn this paper we demonstrate how Gröbner bases and other algebraic techniques can be used to explore the geometry of the probability space of Bayesian networks with hidden variables. These techniques employ a parametrisation of Bayesian network by moments rather than conditional probabilities. We show that whilst Gröbner bases help to explain the local geometry of these spaces a complimentary analysis, modelling the positivity of probabilities, enhances and completes the geometrical picture. We report some recent geometrical results in this area and discuss a possible general methodology for the analyses of such problems
We characterize probabilities in Bayesian networks in terms of algebraic expressions called quasi-pr...
Inference of the marginal probability distribution is defined as the calculation of the probability ...
Bayesian networks have grown to become a dominant type of model within the domain of probabilistic g...
AbstractIn this paper we demonstrate how Gröbner bases and other algebraic techniques can be used to...
In this paper we demonstrate how Grobner bases and other algebraic techniques can be used to explore...
The purpose of this paper is to present a systematic way of analysing the geometry of the probabilit...
AbstractWe study the algebraic varieties defined by the conditional independence statements of Bayes...
We develop the necessary theory in computational algebraic geometry to place Bayesian networks into ...
AbstractWe study the algebraic varieties defined by the conditional independence statements of Bayes...
Bayesian networks are a means to study data. A Bayesian network gives structure to data by creating ...
This article presents a unified mathematical framework for inference in graphical models, building o...
Grobner bases, elimination theory and factorization may be used to perform calculations in elementar...
Groebner bases, elimination theory and factorization may be used to perform calculations in elementa...
AbstractConditional independence models in the Gaussian case are algebraic varieties in the cone of ...
Algebraic geometry is used to study properties of a class of discrete distributions defined on trees...
We characterize probabilities in Bayesian networks in terms of algebraic expressions called quasi-pr...
Inference of the marginal probability distribution is defined as the calculation of the probability ...
Bayesian networks have grown to become a dominant type of model within the domain of probabilistic g...
AbstractIn this paper we demonstrate how Gröbner bases and other algebraic techniques can be used to...
In this paper we demonstrate how Grobner bases and other algebraic techniques can be used to explore...
The purpose of this paper is to present a systematic way of analysing the geometry of the probabilit...
AbstractWe study the algebraic varieties defined by the conditional independence statements of Bayes...
We develop the necessary theory in computational algebraic geometry to place Bayesian networks into ...
AbstractWe study the algebraic varieties defined by the conditional independence statements of Bayes...
Bayesian networks are a means to study data. A Bayesian network gives structure to data by creating ...
This article presents a unified mathematical framework for inference in graphical models, building o...
Grobner bases, elimination theory and factorization may be used to perform calculations in elementar...
Groebner bases, elimination theory and factorization may be used to perform calculations in elementa...
AbstractConditional independence models in the Gaussian case are algebraic varieties in the cone of ...
Algebraic geometry is used to study properties of a class of discrete distributions defined on trees...
We characterize probabilities in Bayesian networks in terms of algebraic expressions called quasi-pr...
Inference of the marginal probability distribution is defined as the calculation of the probability ...
Bayesian networks have grown to become a dominant type of model within the domain of probabilistic g...