Data that has a complex relational structure and in which observations are noisy or partially missing poses several challenges to traditional machine learning al-gorithms. One solution to this problem is the use of so-called probabilistic logical models (models that com-bine elements of first-order logic with probabilities) and corresponding learning algorithms. In this thesis we focus on directed probabilistic logical models. We show how to represent such models and develop several algorithms to learn such models from data
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Probabilistic inductive logic programming, sometimes also called statistical relational learning, ad...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...
Data that has a complex relational structure and in which observations are noisy or partially missin...
Recently, there has been an increasing interest in probabilistic logical models and a variety of suc...
Abstract. Recently, there has been an increasing interest in directed probabilistic logical models a...
We discuss how to learn non-recursive directed probabilistic logical models from relational data. Th...
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...
There is an increasing interest in upgrading Bayesian networks to the relational case, resulting in ...
Probabilistic inductive logic programming (PILP), sometimes also called statistical relational learn...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Automatisch leren (``machine learning'') is de studie van algoritmenvoor het leren van modellen uit ...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
The field of Statistical Relational Learning (SRL) is concerned with learning probabilistic models f...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Probabilistic inductive logic programming, sometimes also called statistical relational learning, ad...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...
Data that has a complex relational structure and in which observations are noisy or partially missin...
Recently, there has been an increasing interest in probabilistic logical models and a variety of suc...
Abstract. Recently, there has been an increasing interest in directed probabilistic logical models a...
We discuss how to learn non-recursive directed probabilistic logical models from relational data. Th...
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...
There is an increasing interest in upgrading Bayesian networks to the relational case, resulting in ...
Probabilistic inductive logic programming (PILP), sometimes also called statistical relational learn...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Automatisch leren (``machine learning'') is de studie van algoritmenvoor het leren van modellen uit ...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
The field of Statistical Relational Learning (SRL) is concerned with learning probabilistic models f...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Probabilistic inductive logic programming, sometimes also called statistical relational learning, ad...
Several models combining Bayesian networks with logic exist. The two most developed models are Proba...