Weighted model counting (WMC) has recently emerged as an effective and general approach to probabilistic inference, offering a computational framework for encoding a variety of formalisms, such as factor graphs and Bayesian networks.The advent of large-scale probabilistic knowledge bases has generated further interest in relational probabilistic representations, obtained by according weights to first-order formulas, whose semantics is given in terms of the ground theory, and solved by WMC. A fundamental limitation is that the domain of quantification, by construction and design, is assumed to be finite, which is at odds with areas such as vision and language understanding, where the existence of objects must be inferred from raw data. Drop...
Abstract First-order model counting emerged recently as a novel reasoning task, at the core of effic...
Statistical relational learning (SRL) augments probabilistic models with relational representations ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
AbstractA recent and effective approach to probabilistic inference calls for reducing the problem to...
A recent and effective approach to probabilistic inference calls for reducing the problem to one of ...
Abstract First-order model counting recently emerged as a computational tool for high-level probabil...
In this paper we study lifted inference for the Weighted First-Order Model Counting problem (WFOMC),...
Weighted model counting, that is, counting the weighted number of satisfying assignments of a propos...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
Weighted model counting (WMC) is a well-known inference task on knowledge bases, used for probabilis...
Weighted model counting (WMC) on a propositional knowledge base is an effective and general approach...
Relational Bayesian networks extend standard Bayesian networks by integrating some of the expressive...
Statistical relational models provide compact encodings of probabilistic dependencies in relational ...
Abstract First-order model counting emerged recently as a novel reasoning task, at the core of effic...
Statistical relational learning (SRL) augments probabilistic models with relational representations ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
AbstractA recent and effective approach to probabilistic inference calls for reducing the problem to...
A recent and effective approach to probabilistic inference calls for reducing the problem to one of ...
Abstract First-order model counting recently emerged as a computational tool for high-level probabil...
In this paper we study lifted inference for the Weighted First-Order Model Counting problem (WFOMC),...
Weighted model counting, that is, counting the weighted number of satisfying assignments of a propos...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
Weighted model counting (WMC) is a well-known inference task on knowledge bases, used for probabilis...
Weighted model counting (WMC) on a propositional knowledge base is an effective and general approach...
Relational Bayesian networks extend standard Bayesian networks by integrating some of the expressive...
Statistical relational models provide compact encodings of probabilistic dependencies in relational ...
Abstract First-order model counting emerged recently as a novel reasoning task, at the core of effic...
Statistical relational learning (SRL) augments probabilistic models with relational representations ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...