. This paper addresses two central problems for probabilistic processing models: parameter estimation from incomplete data and efficient retrieval of most probable analyses. These questions have been answered satisfactorily only for probabilistic regular and context-free models. We address these problems for a more expressive probabilistic constraint logic programming model. We present a log-linear probability model for probabilistic constraint logic programming. On top of this model we define an algorithm to estimate the parameters and to select the properties of log-linear models from incomplete data. This algorithm is an extension of the improved iterative scaling algorithm of Della Pietra, Della Pietra, and Lafferty (1995). Our algorith...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint satisfactio...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint satisfactio...
In Datalog, missing values are represented by Skolem constants. More generally, in logic programmi...
Most approaches to probabilistic logic programming deal with deduction systems and xpoint semantics ...
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...
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 firstord...
In Datalog, missing values are represented by Skolem constants. More generally, in logic programming...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint sat-isfacti...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
We introduce a new approach to probabilistic logic programming in which probabilities are defined ov...
Abstract Probabilistic logics combine the expressive power of logic with the ability to reason with ...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint satisfactio...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint satisfactio...
In Datalog, missing values are represented by Skolem constants. More generally, in logic programmi...
Most approaches to probabilistic logic programming deal with deduction systems and xpoint semantics ...
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...
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 firstord...
In Datalog, missing values are represented by Skolem constants. More generally, in logic programming...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint sat-isfacti...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
We introduce a new approach to probabilistic logic programming in which probabilities are defined ov...
Abstract Probabilistic logics combine the expressive power of logic with the ability to reason with ...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint satisfactio...
We hypothesize and confirm that probabilistic reasoning is closely related to constraint satisfactio...
In Datalog, missing values are represented by Skolem constants. More generally, in logic programmi...