AbstractOne of the key computational problems in Bayesian networks is computing the maximal posterior probability of a set of variables in the network, given an observation of the values of another set of variables. In its most simple form, this problem is known as the MPE-problem. In this paper, we give an overview of the computational complexity of many problem variants, including enumeration variants, parameterized problems, and approximation strategies to the MPE-problem with and without additional (neither observed nor explained) variables. Many of these complexity results appear elsewhere in the literature; other results have not been published yet. The paper aims to provide a fairly exhaustive overview of both the known and new resul...
Abstract Finding the I Most Probable IJxplanations (MPE) of a given evidence, Se, in a Bayesian beli...
Finding the most probable explanation for observed variables in a Bayesian network is a notoriously ...
In this thesis, the computational complexity of a number of problems related to probabilistic networ...
AbstractOne of the key computational problems in Bayesian networks is computing the maximal posterio...
Multi-dimensional Bayesian networks (MBCs) have been recently shown to perform efficient classificat...
\u3cp\u3eThis paper presents new results for the (partial) maximum a posteriori (MAP) problem in Bay...
MAP is the problem of finding a most probable instantiation of a set of variables given evidence. MA...
We study the computational complexity of finding maximum a posteriori configurations in Bayesian net...
This paper presents new results for the (partial) maximum a posteriori (MAP) problem in Bayesian net...
Given evidence on a set of variables in a Bayesian network, the most probable explanation (MPE) is t...
Given evidence on a set of variables in a Bayesian network, the most probable explanation (MPE) is ...
AbstractDirected-path (DP) singly-connected Bayesian networks are an interesting special case that, ...
In addition to computing the posterior distributions for hidden variables in Bayesian networks, one ...
Multidimensional Bayesian network classifiers have gained popularity over the last few years due to ...
Contains fulltext : 83894.pdf (publisher's version ) (Open Access)20 p1 p
Abstract Finding the I Most Probable IJxplanations (MPE) of a given evidence, Se, in a Bayesian beli...
Finding the most probable explanation for observed variables in a Bayesian network is a notoriously ...
In this thesis, the computational complexity of a number of problems related to probabilistic networ...
AbstractOne of the key computational problems in Bayesian networks is computing the maximal posterio...
Multi-dimensional Bayesian networks (MBCs) have been recently shown to perform efficient classificat...
\u3cp\u3eThis paper presents new results for the (partial) maximum a posteriori (MAP) problem in Bay...
MAP is the problem of finding a most probable instantiation of a set of variables given evidence. MA...
We study the computational complexity of finding maximum a posteriori configurations in Bayesian net...
This paper presents new results for the (partial) maximum a posteriori (MAP) problem in Bayesian net...
Given evidence on a set of variables in a Bayesian network, the most probable explanation (MPE) is t...
Given evidence on a set of variables in a Bayesian network, the most probable explanation (MPE) is ...
AbstractDirected-path (DP) singly-connected Bayesian networks are an interesting special case that, ...
In addition to computing the posterior distributions for hidden variables in Bayesian networks, one ...
Multidimensional Bayesian network classifiers have gained popularity over the last few years due to ...
Contains fulltext : 83894.pdf (publisher's version ) (Open Access)20 p1 p
Abstract Finding the I Most Probable IJxplanations (MPE) of a given evidence, Se, in a Bayesian beli...
Finding the most probable explanation for observed variables in a Bayesian network is a notoriously ...
In this thesis, the computational complexity of a number of problems related to probabilistic networ...