AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inference analysis in uncertain knowledge-based systems. The experts' opinions in a given problem are viewed as additional information in cognitive decision processes. Depending upon which uncertainty measures are used in expert knowledge representation, different inferential engines will be proposed. The flow from data to decisions will be examined in order to help the design of intelligent systems. In considering various types of uncertainty measures, the problem of admissibility will be addressed
Uncertainty quantification can be broadly defined as the process of characterizing, estimating, prop...
This paper presents an approach to the explicit integration of uncertain reasoning mechanisms into ...
The solution of non-deterministic expert systems consists of two components –the solution reached an...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
peer-reviewedIncreasingly we rely on machine intelligence for reasoning and decision making under un...
Much of the research done in Artificial Intelligence involves investigating and developing methods o...
Expert opinion and judgment enter into the practice of statistical inference and decision-making in ...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
The quality of an expert system, it is argued in this paper, is determined by the quality of its kno...
AbstractThis paper compares four measures that have been advocated as models for uncertainty in expe...
Abstract — The aim of artificial intelligence is to develop tools for representing piece of knowledg...
PresentationTo be acceptably safe one must identify the risks one is exposed to. It is uncertain whe...
AbstractThe use of support pairs associated with the facts and rules of a knowledge base of an exper...
AbstractMost expert knowledge is ill-defined and heuristic. Therefore, many present-day rule-based e...
AbstractDespite their different perspectives, artificial intelligence (AI) and the disciplines of de...
Uncertainty quantification can be broadly defined as the process of characterizing, estimating, prop...
This paper presents an approach to the explicit integration of uncertain reasoning mechanisms into ...
The solution of non-deterministic expert systems consists of two components –the solution reached an...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
peer-reviewedIncreasingly we rely on machine intelligence for reasoning and decision making under un...
Much of the research done in Artificial Intelligence involves investigating and developing methods o...
Expert opinion and judgment enter into the practice of statistical inference and decision-making in ...
The problem of modeling uncertainty and inexact reasoning in rule-based expert systems is challengin...
The quality of an expert system, it is argued in this paper, is determined by the quality of its kno...
AbstractThis paper compares four measures that have been advocated as models for uncertainty in expe...
Abstract — The aim of artificial intelligence is to develop tools for representing piece of knowledg...
PresentationTo be acceptably safe one must identify the risks one is exposed to. It is uncertain whe...
AbstractThe use of support pairs associated with the facts and rules of a knowledge base of an exper...
AbstractMost expert knowledge is ill-defined and heuristic. Therefore, many present-day rule-based e...
AbstractDespite their different perspectives, artificial intelligence (AI) and the disciplines of de...
Uncertainty quantification can be broadly defined as the process of characterizing, estimating, prop...
This paper presents an approach to the explicit integration of uncertain reasoning mechanisms into ...
The solution of non-deterministic expert systems consists of two components –the solution reached an...