Belief updating schemes in artificial intelligence may be viewed as three dimensional languages, consisting of a syntax (e.g. probabilities or certainty factors), a calculus (e.g. Bayesian or CF combination rules), and a semantics (i.e. cognitive interpretations of competing formalisms). This paper studies the rational scope of those languages on the syntax and calculus grounds. In particular, the paper presents an endomorphism theorem which highlights the limitations imposed by the conditional independence assumptions implicit in the CF calculus. Implications of the theorem to the relationship between the CF and the Bayesian languages and the Dempster-Shafer theory of evidence are presented. The paper concludes with a discussion of some im...
The goal of this paper is to compare the similarities and differences between Bayesian and belief fu...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
Rule-based expert systems must deal with uncertain data, subjective expert opinions, and inaccurate ...
Rule based expert systems deal with inexact reasoning through a variety of quasi-probabilistic metho...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
Reasoning with uncertain information has received a great deal of attention recently, as this issue ...
We first describe a metric for uncertain probabilities called opinion, and subsequently a set of log...
The solution of non-deterministic expert systems consists of two components –the solution reached an...
According to Aristotle, humans are the rational animal. The borderline between rationality and irrat...
AbstractThe theory of belief functions is a generalization of the Bayesian theory of subjective prob...
Moss (2018) argues that rational agents are best thought of not as having degrees of belief in vario...
The goal of this paper is to compare the similarities and differences between Bayesian and belief fu...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
Rule-based expert systems must deal with uncertain data, subjective expert opinions, and inaccurate ...
Rule based expert systems deal with inexact reasoning through a variety of quasi-probabilistic metho...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
Reasoning with uncertain information has received a great deal of attention recently, as this issue ...
We first describe a metric for uncertain probabilities called opinion, and subsequently a set of log...
The solution of non-deterministic expert systems consists of two components –the solution reached an...
According to Aristotle, humans are the rational animal. The borderline between rationality and irrat...
AbstractThe theory of belief functions is a generalization of the Bayesian theory of subjective prob...
Moss (2018) argues that rational agents are best thought of not as having degrees of belief in vario...
The goal of this paper is to compare the similarities and differences between Bayesian and belief fu...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...