We propose an algorithm for compiling Bayesian network classifiers into decision graphs that mimic the input and output behavior of the classifiers. In particular, we compile Bayesian network classifiers into ordered decision graphs, which are tractable and can be exponentially smaller in size than decision trees. This tractability facilitates reasoning about the behavior of Bayesian network classifiers, including the explanation of decisions they make. Our compilation algorithm comes with guarantees on the time of compilation and the size of compiled decision graphs. We apply our compilation algorithm to classifiers from the literature and discuss some case studies in which we show how to automatically explain their decisions and verify pr...
In this paper we present a novel approach for combining GP-based ensembles by means of a Bayesian Ne...
The computational complexity of inference is now one of the most relevant topics in the field of Bay...
In this paper we present an extension to the classical kdependence Bayesian network classifier algor...
An analysis of Bayesian networks as classifiers is presented. This analysis results in an algorithm ...
We adopt probabilistic decision graphs developed in the field of automated verification as a tool fo...
Udgivelsesdato: JANWe adopt probabilistic decision graphs developed in the field of automated verifi...
The structure of a Bayesian network (BN) encodes variable independence. Learning the structure of a ...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
AbstractThis paper is about how to represent and solve decision problems in Bayesian decision theory...
AbstractProbabilistic decision graphs (PDGs) are a representation language for probability distribut...
Probabilistic decision graphs (PDGs) are a representation language for probability distributions bas...
This thesis is about how to represent and solve decision problems in Bayesian decision the ory (e.g...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
This thesis is about how to represent and solve decision problems in Bayesian decision theory (e.g. ...
Low-dimensional probability models for local distribution functions in a Bayesian network include de...
In this paper we present a novel approach for combining GP-based ensembles by means of a Bayesian Ne...
The computational complexity of inference is now one of the most relevant topics in the field of Bay...
In this paper we present an extension to the classical kdependence Bayesian network classifier algor...
An analysis of Bayesian networks as classifiers is presented. This analysis results in an algorithm ...
We adopt probabilistic decision graphs developed in the field of automated verification as a tool fo...
Udgivelsesdato: JANWe adopt probabilistic decision graphs developed in the field of automated verifi...
The structure of a Bayesian network (BN) encodes variable independence. Learning the structure of a ...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
AbstractThis paper is about how to represent and solve decision problems in Bayesian decision theory...
AbstractProbabilistic decision graphs (PDGs) are a representation language for probability distribut...
Probabilistic decision graphs (PDGs) are a representation language for probability distributions bas...
This thesis is about how to represent and solve decision problems in Bayesian decision the ory (e.g...
Probability is a useful tool for reasoning when faced with uncertainty. Bayesian networks offer a co...
This thesis is about how to represent and solve decision problems in Bayesian decision theory (e.g. ...
Low-dimensional probability models for local distribution functions in a Bayesian network include de...
In this paper we present a novel approach for combining GP-based ensembles by means of a Bayesian Ne...
The computational complexity of inference is now one of the most relevant topics in the field of Bay...
In this paper we present an extension to the classical kdependence Bayesian network classifier algor...