Standard approaches to probabilistic reasoning require that one possesses an explicit model of the distribution in question. But, the empirical learning of models of probability distributions from partial observations is a problem for which efficient algorithms are generally not known. In this work we consider the use of bounded-degree fragments of the “sum-of-squares” logic as a probability logic. Prior work has shown that we can decide refutability for such fragments in polynomial-time. We propose to use such fragments to decide queries about whether a given probability distribution satisfies a given system of constraints and bounds on expected values. We show that in answering such queries, such constraints and bounds can be implicitly l...
We show that probabilistic computable functions, i.e., those func- tions outputting distributions an...
Tractable learning aims to learn probabilistic models where inference is guaran-teed to be efficient...
We present locally complete inference rules for probabilistic deduction from taxonomic and probabili...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
Probabilistic generating circuits (PGCs) are economical representations of multivariate probability ...
A probabilistic inference rule is a general rule that provides bounds on a target probability given ...
Probabilistic logic models are used ever more often to deal with the uncertain relations typical of...
In this paper we consider the inference rules of System P in the framework of coherent imprecise pro...
We introduce a general framework for defining classes of probabilistic-logic models and associated c...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint sat-isfacti...
Probabilistic sentential decision diagrams (PSDDs) are a tractable representation of structured prob...
In numerous real world applications, from sensor networks to computer vision to natural text process...
AbstractThe paper presents the proof-theoretical approach to a probabilistic logic which allows expr...
In this paper we propose a measure for the implicit degree of support for coherent extensions of pro...
Abstract. We establish a generic theoretical tool to construct probabilistic bounds for algorithms w...
We show that probabilistic computable functions, i.e., those func- tions outputting distributions an...
Tractable learning aims to learn probabilistic models where inference is guaran-teed to be efficient...
We present locally complete inference rules for probabilistic deduction from taxonomic and probabili...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
Probabilistic generating circuits (PGCs) are economical representations of multivariate probability ...
A probabilistic inference rule is a general rule that provides bounds on a target probability given ...
Probabilistic logic models are used ever more often to deal with the uncertain relations typical of...
In this paper we consider the inference rules of System P in the framework of coherent imprecise pro...
We introduce a general framework for defining classes of probabilistic-logic models and associated c...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint sat-isfacti...
Probabilistic sentential decision diagrams (PSDDs) are a tractable representation of structured prob...
In numerous real world applications, from sensor networks to computer vision to natural text process...
AbstractThe paper presents the proof-theoretical approach to a probabilistic logic which allows expr...
In this paper we propose a measure for the implicit degree of support for coherent extensions of pro...
Abstract. We establish a generic theoretical tool to construct probabilistic bounds for algorithms w...
We show that probabilistic computable functions, i.e., those func- tions outputting distributions an...
Tractable learning aims to learn probabilistic models where inference is guaran-teed to be efficient...
We present locally complete inference rules for probabilistic deduction from taxonomic and probabili...