Recent work on loglinear models in probabilistic constraint logic programming is applied to first-order probabilistic reasoning. Probabilities are defined directly on the proofs of atomic formulae, and by marginalisation on the atomic formulae themselves. We use Stochastic Logic Programs (SLPs) composed of labelled and unlabelled definite clauses to define the proof probabilities. We have a conservative extension of first-order reasoning, so that, for example, there is a one-one mapping between logical and random variables. We show how, in this framework, Inductive Logic Programming (ILP) can be used to induce the features of a loglinear model from data. We also compare the presented framework with other approaches to first-order probabilis...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
First-order probabilistic models are recognized as efficient frameworks to represent several realwor...
Recent work on loglinear models in probabilistic constraint logic programming is applied to firstord...
Recent work on loglinear models in probabilistic constraint logic programming is applied to first-or...
Recent work on loglinear models in probabilistic constraint logic programming is applied to first-or...
. This paper addresses two central problems for probabilistic processing models: parameter estimatio...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
Probabilistic inductive logic programming, sometimes also called statistical relational learning, ad...
Log-linear description logics are a family of probabilistic logics integrating various concepts and ...
Stochastic Logic Programs (SLPs) have been shown to be a generalization of Hidden Markov Models (HMM...
AbstractOf all scientific investigations into reasoning with uncertainty and chance, probability the...
The field of Probabilistic Logic Programming (PLP) has seen significant advances in the last 20 year...
We present CLP(BN), a novel approach that aims at expressing Bayesian networks through the constrain...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
First-order probabilistic models are recognized as efficient frameworks to represent several realwor...
Recent work on loglinear models in probabilistic constraint logic programming is applied to firstord...
Recent work on loglinear models in probabilistic constraint logic programming is applied to first-or...
Recent work on loglinear models in probabilistic constraint logic programming is applied to first-or...
. This paper addresses two central problems for probabilistic processing models: parameter estimatio...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
Probabilistic inductive logic programming, sometimes also called statistical relational learning, ad...
Log-linear description logics are a family of probabilistic logics integrating various concepts and ...
Stochastic Logic Programs (SLPs) have been shown to be a generalization of Hidden Markov Models (HMM...
AbstractOf all scientific investigations into reasoning with uncertainty and chance, probability the...
The field of Probabilistic Logic Programming (PLP) has seen significant advances in the last 20 year...
We present CLP(BN), a novel approach that aims at expressing Bayesian networks through the constrain...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
First-order probabilistic models are recognized as efficient frameworks to represent several realwor...