Rule-based expert systems must deal with uncertain data, subjective expert opinions, and inaccurate decision rules. Computer scientists and psychologists have proposed and implemented a number of belief languages widely used in applied systems, and their normative validity is clearly an important question, both on practical as well on theoretical grounds. Several well-know belief languages are reviewed, and both previous work and new insights into their Bayesian interpretations are presented. In particular, the authors focus on three alternative belief-update models the certainty factors calculus, Dempster-Shafer simple support functions, and the descriptive contrast/inertia model. Important "dialectsâ of these languages are shown to be ...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
One of the key challenges in designing expert systems is a credible represen-tation of uncertainty a...
Belief networks, also called Bayesian networks or probabilistic causal networks, were developed in t...
Rule-based expert systems must deal with uncertain data, subjective expert opinions, and inaccurate ...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
Rule based expert systems deal with inexact reasoning through a variety of quasi-probabilistic metho...
Rule based expert systems deal with inexact reasoning through a variety of quasi-probabilistic metho...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
Belief updating schemes in artificial intelligence may be viewed as three dimensional languages, con...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
AbstractThe theory of belief functions is a generalization of the Bayesian theory of subjective prob...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
One of the key challenges in designing expert systems is a credible represen-tation of uncertainty a...
Belief networks, also called Bayesian networks or probabilistic causal networks, were developed in t...
Rule-based expert systems must deal with uncertain data, subjective expert opinions, and inaccurate ...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
Rule based expert systems deal with inexact reasoning through a variety of quasi-probabilistic metho...
Rule based expert systems deal with inexact reasoning through a variety of quasi-probabilistic metho...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
Belief updating schemes in artificial intelligence may be viewed as three dimensional languages, con...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
AbstractThe theory of belief functions is a generalization of the Bayesian theory of subjective prob...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
One of the key challenges in designing expert systems is a credible represen-tation of uncertainty a...
Belief networks, also called Bayesian networks or probabilistic causal networks, were developed in t...