The solution of non-deterministic expert systems consists of two components –the solution reached and a calculated measure of belief in each solution. This measure of belief is often the most critical factor in analyzing the solution. Unfortunately, as this paper reviews, the issue of how best to implement uncertainty calculi in expert systems has never been settled. Some popular rule-based approaches have in fact been shown to produce results no better than random guessing. To improve the accuracy of rule-based systems, we propose a new calculus we call gamma factors. This calculus combines ideas from two popular certainty factor calculi the product method, and the probability sum method. It includes a tuning mechanism which the expert can...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
The current paradigm of modelling uncertainty in expert systems knowledge bases using Certainty Fact...
The current paradigm of modelling uncertainty in expert systems knowledge bases using Certainty Fact...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
Much of the research done in Artificial Intelligence involves investigating and developing methods o...
AbstractMost expert knowledge is ill-defined and heuristic. Therefore, many present-day rule-based e...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
AbstractMost expert knowledge is ill-defined and heuristic. Therefore, many present-day rule-based e...
Belief updating schemes in artificial intelligence may be viewed as three dimensional languages, con...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
The current paradigm of modelling uncertainty in expert systems knowledge bases using Certainty Fact...
The current paradigm of modelling uncertainty in expert systems knowledge bases using Certainty Fact...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
Much of the research done in Artificial Intelligence involves investigating and developing methods o...
AbstractMost expert knowledge is ill-defined and heuristic. Therefore, many present-day rule-based e...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
One of the key challenges in designing expert systems is a credible representation of uncertainty an...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
AbstractMost expert knowledge is ill-defined and heuristic. Therefore, many present-day rule-based e...
Belief updating schemes in artificial intelligence may be viewed as three dimensional languages, con...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...