The issue of information sharing and exchanging is one of the most important issues in the areas of artificial intelligence and knowledge-based systems (KBSs), or even in the broader areas of computer and information technology. This paper deals with a special case of this issue by carrying out a case study of information sharing between two well-known heterogeneous uncertain reasoning models: the certainty factor model and the subjective Bayesian method. More precisely, this paper discovers a family of exactly isomorphic transformations between these two uncertain reasoning models. More interestingly, among isomorphic transformation functions in this family, different ones can handle different degrees to which a domain expert is positive o...
Inference under uncertainty plays a crucial role in expert system and receives growing attention fro...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
AbstractThe issue of information sharing and exchanging is one of the most important issues in the a...
Just as cooperation between human experts is important when solving complex problems, so too is coop...
In the past, expert systems exploited mainly the EMYCIN model and the PROSPECTOR model to deal with ...
Multi-agent systems play an increasing role in sensor networks, software engineering, web design, e-...
Reasoning with uncertain information has received a great deal of attention recently, as this issue ...
Abstract—Decision making in a semistructured or unstructured problem should consist of a combination...
AbstractWe address the problem of information fusion in uncertain environments. Imagine there are mu...
Combining data from many different sources or from sources that are not entirely trusted brings chal...
International audienceMany problems in AI (in reasoning, planning, learning, perception and robotics...
AbstractThe use of support pairs associated with the facts and rules of a knowledge base of an exper...
Bayesian decision theory provides a strong theoretical basis for a single-participant decision makin...
In the field of informed decision-making, the usage of a single diagnostic expert system has limitat...
Inference under uncertainty plays a crucial role in expert system and receives growing attention fro...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...
AbstractThe issue of information sharing and exchanging is one of the most important issues in the a...
Just as cooperation between human experts is important when solving complex problems, so too is coop...
In the past, expert systems exploited mainly the EMYCIN model and the PROSPECTOR model to deal with ...
Multi-agent systems play an increasing role in sensor networks, software engineering, web design, e-...
Reasoning with uncertain information has received a great deal of attention recently, as this issue ...
Abstract—Decision making in a semistructured or unstructured problem should consist of a combination...
AbstractWe address the problem of information fusion in uncertain environments. Imagine there are mu...
Combining data from many different sources or from sources that are not entirely trusted brings chal...
International audienceMany problems in AI (in reasoning, planning, learning, perception and robotics...
AbstractThe use of support pairs associated with the facts and rules of a knowledge base of an exper...
Bayesian decision theory provides a strong theoretical basis for a single-participant decision makin...
In the field of informed decision-making, the usage of a single diagnostic expert system has limitat...
Inference under uncertainty plays a crucial role in expert system and receives growing attention fro...
In developing methods for dealing with uncertainty in reasoning systems, it is important to consider...
AbstractThis paper addresses the problem of modeling of expert knowledge as a starting point for inf...