AbstractIn cost-based abduction, the objective is to find the least-cost set of hypotheses that are sufficient to explain the observed evidence. In the maximuma-posteriori (MAP) assignment problem on Bayesian belief networks, the objective is to find the network assignment A with highest conditional probability P(A¦ε), where L represents the observed evidence. In this paper, we present a provablycorrect linear-time transformation that allows algorithms and heuristic methods for cost-based abduction, such as Charniak and Shimony's best-first search method or Santos' integer linear programming approach, to be used for the MAP problem
AbstractA number of exact algorithms have been developed in recent years to perform probabilistic in...
In this paper we propose several approximation algorithms for the problems of full and partial abduc...
The MAP (maximum a posteriori hypothesis) problem in Bayesian networks is to find the most likely st...
AbstractIn cost-based abduction, the objective is to find the least-cost set of hypotheses that are ...
AbstractFinding maximum a posteriori (MAP) assignments, also called Most Probable Explanations, is a...
In recent years Bayesian belief networks have assumed increasing practical importance in many fields...
Abstract—Abductive inference in Bayesian belief networks, also known as most probable explanation (M...
Abstract Most learning algorithms assume that a data set is given initially. We address the common s...
Most learning algorithms assume that a data set is given initially. We address the com- mon situatio...
In this paper, we study the maximum a posteriori (MAP) problem in dynamic hybrid Bayesian networks. ...
AbstractProbabilistic inference and maximum a posteriori (MAP) explanation are two important and rel...
In this paper, the problem of learning a Bayesian belief network (BBN) from given examples based on ...
This paper presents new results for the (partial) maximum a posteriori (MAP) problem in Bayesian net...
Cost-based abduction (CBA) is an important NP-hard problem in automated reasoning. in this formalism...
In general, the best explanation for a given observation makes no promises on how good it is with re...
AbstractA number of exact algorithms have been developed in recent years to perform probabilistic in...
In this paper we propose several approximation algorithms for the problems of full and partial abduc...
The MAP (maximum a posteriori hypothesis) problem in Bayesian networks is to find the most likely st...
AbstractIn cost-based abduction, the objective is to find the least-cost set of hypotheses that are ...
AbstractFinding maximum a posteriori (MAP) assignments, also called Most Probable Explanations, is a...
In recent years Bayesian belief networks have assumed increasing practical importance in many fields...
Abstract—Abductive inference in Bayesian belief networks, also known as most probable explanation (M...
Abstract Most learning algorithms assume that a data set is given initially. We address the common s...
Most learning algorithms assume that a data set is given initially. We address the com- mon situatio...
In this paper, we study the maximum a posteriori (MAP) problem in dynamic hybrid Bayesian networks. ...
AbstractProbabilistic inference and maximum a posteriori (MAP) explanation are two important and rel...
In this paper, the problem of learning a Bayesian belief network (BBN) from given examples based on ...
This paper presents new results for the (partial) maximum a posteriori (MAP) problem in Bayesian net...
Cost-based abduction (CBA) is an important NP-hard problem in automated reasoning. in this formalism...
In general, the best explanation for a given observation makes no promises on how good it is with re...
AbstractA number of exact algorithms have been developed in recent years to perform probabilistic in...
In this paper we propose several approximation algorithms for the problems of full and partial abduc...
The MAP (maximum a posteriori hypothesis) problem in Bayesian networks is to find the most likely st...