Abstract. Recently, there has been an increasing interest in directed probabilistic logical models and a variety of languages for describing such models has been proposed. Although many authors provide high-level arguments to show that in principle models in their language can be learned from data, most of the proposed learning algorithms have not yet been studied in detail. We introduce an algorithm, generalized ordering-search, to learn both structure and conditional probability distributions (CPDs) of directed probabilistic logical models. The algorithm upgrades the ordering-search algorithm for Bayesian networks. We use relational probability trees as a representation for the CPDs. We present experiments on blocks world domains, a gene ...
In real world domains the information is often uncertain, hence it is of foremost importance to be a...
We present a formalism for combining logic programming and its flavour of nondeterminism with probab...
Probabilistic Sentential Decision Diagrams (PSDDs) have been proposed for learning tractable probabi...
Recently, there has been an increasing interest in directed probabilistic logical models and a varie...
Recently, there has been an increasing interest in probabilistic logical models and a variety of suc...
We discuss how to learn non-recursive directed probabilistic logical models from relational data. Th...
There is an increasing interest in upgrading Bayesian networks to the relational case, resulting in ...
Abstract We discuss how to learn non-recursive directed probabilistic logical models from relational...
Abstract. We discuss how to learn non-recursive directed probabilistic logical models from relationa...
Data that has a complex relational structure and in which observations are noisy or partially missin...
Data that has a complex relational structure and in which observations are noisy or partially missin...
Integrating the expressive power of first-order logic with the probabilistic reasoning power of Baye...
Bayesian networks are a popular class of graphical models to encode conditional independence and cau...
Abstract. This paper introduces Higher-Order Bayesian Networks, a probabilistic reasoning formalism ...
Probabilistic sentential decision diagrams (PSDDs) are a tractable representation of structured prob...
In real world domains the information is often uncertain, hence it is of foremost importance to be a...
We present a formalism for combining logic programming and its flavour of nondeterminism with probab...
Probabilistic Sentential Decision Diagrams (PSDDs) have been proposed for learning tractable probabi...
Recently, there has been an increasing interest in directed probabilistic logical models and a varie...
Recently, there has been an increasing interest in probabilistic logical models and a variety of suc...
We discuss how to learn non-recursive directed probabilistic logical models from relational data. Th...
There is an increasing interest in upgrading Bayesian networks to the relational case, resulting in ...
Abstract We discuss how to learn non-recursive directed probabilistic logical models from relational...
Abstract. We discuss how to learn non-recursive directed probabilistic logical models from relationa...
Data that has a complex relational structure and in which observations are noisy or partially missin...
Data that has a complex relational structure and in which observations are noisy or partially missin...
Integrating the expressive power of first-order logic with the probabilistic reasoning power of Baye...
Bayesian networks are a popular class of graphical models to encode conditional independence and cau...
Abstract. This paper introduces Higher-Order Bayesian Networks, a probabilistic reasoning formalism ...
Probabilistic sentential decision diagrams (PSDDs) are a tractable representation of structured prob...
In real world domains the information is often uncertain, hence it is of foremost importance to be a...
We present a formalism for combining logic programming and its flavour of nondeterminism with probab...
Probabilistic Sentential Decision Diagrams (PSDDs) have been proposed for learning tractable probabi...