AbstractThis paper explores the relationship between probabilistic and symbolic approaches to reasoning under uncertainty. The principal result is that symbolic and quantitative approaches interact in interesting, sometimes counterintuitive ways. There are several reasons for believing that over multiple domains and applications, propositions true in most (few) of the possible states enumerated by a symbolic reasoning system will usually (rarely) be true. This result does not necessarily depend on the “true” probability of the possible states. Regarding attempts to merge symbolic and probabilistic procedures, it is shown that this is a fundamentally difficult problem. An automated system that assigns probabilities after a possibility space ...
Probability is usually closely related to Boolean structures, i.e. Boolean algebras or propositional...
AbstractIn recent years, several papers have described systems for plausible reasoning which do not ...
In this article we demonstrate how algorithmic probability the-ory is applied to situations that inv...
AbstractThis paper explores the relationship between probabilistic and symbolic approaches to reason...
peer reviewedThis article aims to achieve two goals: to show that probability is not the only way of...
AbstractProbability is usually closely related to Boolean structures, i.e., Boolean algebras or prop...
Automated reasoning about uncertain knowledge has many applications. One difficulty when developing ...
We propose a general scheme for adding probabilistic reasoning capabilities to any knowledge represe...
This paper proposes a concise overview of the role of possibility theory in logical approaches to re...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
This article aims to achieve two goals: to show that probability is not the only way of dealing with...
AbstractA complete approach to reasoning under uncertainty requires support for both identification ...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
Abstract. Reasoning within such domains as engineering, science, management, or medicine is traditio...
International audienceThis paper studies the extension of possibilistic logic to the case when weigh...
Probability is usually closely related to Boolean structures, i.e. Boolean algebras or propositional...
AbstractIn recent years, several papers have described systems for plausible reasoning which do not ...
In this article we demonstrate how algorithmic probability the-ory is applied to situations that inv...
AbstractThis paper explores the relationship between probabilistic and symbolic approaches to reason...
peer reviewedThis article aims to achieve two goals: to show that probability is not the only way of...
AbstractProbability is usually closely related to Boolean structures, i.e., Boolean algebras or prop...
Automated reasoning about uncertain knowledge has many applications. One difficulty when developing ...
We propose a general scheme for adding probabilistic reasoning capabilities to any knowledge represe...
This paper proposes a concise overview of the role of possibility theory in logical approaches to re...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
This article aims to achieve two goals: to show that probability is not the only way of dealing with...
AbstractA complete approach to reasoning under uncertainty requires support for both identification ...
Probabilistic Reasoning in Intelligent Systems is a complete and accessible account of the theoretic...
Abstract. Reasoning within such domains as engineering, science, management, or medicine is traditio...
International audienceThis paper studies the extension of possibilistic logic to the case when weigh...
Probability is usually closely related to Boolean structures, i.e. Boolean algebras or propositional...
AbstractIn recent years, several papers have described systems for plausible reasoning which do not ...
In this article we demonstrate how algorithmic probability the-ory is applied to situations that inv...