AbstractQualitative probabilistic networks were designed to overcome, to at least some extent, the quantification problem known to probabilistic networks. Qualitative networks abstract from the numerical probabilities of their quantitative counterparts by using signs to summarise the probabilistic influences between their variables. One of the major drawbacks of these qualitative abstractions, however, is the coarse level of representation detail that does not provide for indicating strengths of influences. As a result, the trade-offs modelled in a network remain unresolved upon inference. We present an enhanced formalism of qualitative probabilistic networks to provide for a finer level of representation detail. An enhanced qualitative pro...
Qualitative probabilistic networks have been designed for probabilistic reasoning in a qualitative w...
AbstractWhile quantitative probabilistic networks (QPNs) allow experts to state influences between n...
In recent years there has been a spate of pa-pers describing systems for probabilisitic rea-soning w...
A probabilistic network consists of a graphical representation (a directed graph) of the important v...
AbstractQualitative probabilistic networks are qualitative abstractions of probabilistic networks, s...
Qualitative probabilistic networks represent prob-abilistic influences between variables. Due to the...
Qualitative probabilistic networks represent prob-abilistic influences between variables. Due to the...
ions, Decisions, and Uncertainty, Providence, RI, USA, July 1997 Incremental Tradeoff Resolution in...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
AbstractA qualitative probabilistic network is a graphical model of the probabilistic influences amo...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
AbstractQualitative probabilistic networks (QPNs) are basically qualitative derivations of Bayesian ...
Item does not contain fulltextWhile quantitative probabilistic networks (QPNs) allow experts to stat...
While quantitative probabilistic networks (QPNs) allow experts to state influences between nodes in ...
Qualitative probabilistic networks have been designed for probabilistic reasoning in a qualitative w...
AbstractWhile quantitative probabilistic networks (QPNs) allow experts to state influences between n...
In recent years there has been a spate of pa-pers describing systems for probabilisitic rea-soning w...
A probabilistic network consists of a graphical representation (a directed graph) of the important v...
AbstractQualitative probabilistic networks are qualitative abstractions of probabilistic networks, s...
Qualitative probabilistic networks represent prob-abilistic influences between variables. Due to the...
Qualitative probabilistic networks represent prob-abilistic influences between variables. Due to the...
ions, Decisions, and Uncertainty, Providence, RI, USA, July 1997 Incremental Tradeoff Resolution in...
In designing a Bayesian network for an actual problem, developers need to bridge the gap between th...
AbstractA qualitative probabilistic network is a graphical model of the probabilistic influences amo...
AbstractIn designing a Bayesian network for an actual problem, developers need to bridge the gap bet...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
AbstractQualitative probabilistic networks (QPNs) are basically qualitative derivations of Bayesian ...
Item does not contain fulltextWhile quantitative probabilistic networks (QPNs) allow experts to stat...
While quantitative probabilistic networks (QPNs) allow experts to state influences between nodes in ...
Qualitative probabilistic networks have been designed for probabilistic reasoning in a qualitative w...
AbstractWhile quantitative probabilistic networks (QPNs) allow experts to state influences between n...
In recent years there has been a spate of pa-pers describing systems for probabilisitic rea-soning w...