A probabilistic network consists of a graphical representation (a directed graph) of the important variables in a domain of application, and the relationships between them, together with a joint probability distribution over the variables. A probabilistic network allows for computing any probability of interest. The joint probability distribution factorises into conditional probability distributions such that for each variable represented in the graph a distribution is specified conditional on all possible combinations of the variable's parents in the graph. Even for a moderate sized probabilistic network, thousands of probabilities need to be specified. Often the only source of probabilistic information is the knowl...
Qualitative probabilistic networks represent prob-abilistic influences between variables. Due to the...
For many application domains, Bayesian networks are designed in collaboration with a single expert f...
In recent years there has been a spate of pa-pers describing systems for probabilisitic rea-soning w...
AbstractQualitative probabilistic networks were designed to overcome, to at least some extent, the q...
AbstractQualitative probabilistic networks (QPNs) are basically qualitative derivations of Bayesian ...
Probabilistic networks are now fairly well established as practical representations of knowl-edge fo...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
AbstractA qualitative probabilistic network is a graphical model of the probabilistic influences amo...
AbstractQualitative probabilistic networks are qualitative abstractions of probabilistic networks, s...
Probabilistic networks are now fairly well established as practical representations of knowledge for...
This paper presents some results concerning the qualitative behaviour of possibilistic networks. The...
ions, Decisions, and Uncertainty, Providence, RI, USA, July 1997 Incremental Tradeoff Resolution in...
As empirical data collection and inference is often an imperfect process, and many systems can be re...
Qualitative probabilistic networks represent prob-abilistic influences between variables. Due to the...
For many application domains, Bayesian networks are designed in collaboration with a single expert f...
In recent years there has been a spate of pa-pers describing systems for probabilisitic rea-soning w...
AbstractQualitative probabilistic networks were designed to overcome, to at least some extent, the q...
AbstractQualitative probabilistic networks (QPNs) are basically qualitative derivations of Bayesian ...
Probabilistic networks are now fairly well established as practical representations of knowl-edge fo...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
AbstractA qualitative probabilistic network is a graphical model of the probabilistic influences amo...
AbstractQualitative probabilistic networks are qualitative abstractions of probabilistic networks, s...
Probabilistic networks are now fairly well established as practical representations of knowledge for...
This paper presents some results concerning the qualitative behaviour of possibilistic networks. The...
ions, Decisions, and Uncertainty, Providence, RI, USA, July 1997 Incremental Tradeoff Resolution in...
As empirical data collection and inference is often an imperfect process, and many systems can be re...
Qualitative probabilistic networks represent prob-abilistic influences between variables. Due to the...
For many application domains, Bayesian networks are designed in collaboration with a single expert f...
In recent years there has been a spate of pa-pers describing systems for probabilisitic rea-soning w...