Traditional learning techniques learn from flat data files with the assumption that each class has a similar number of examples. However, the majority of real-world data are stored as relational systems with imbalanced data distribution, where one class of data is over-represented as compared with other classes. We propose to extend a relational learning technique called Probabilistic Relational Models (PRMs) to deal with the imbalanced class problem. We address learning from imbalanced relational data using an ensemble of PRMs and propose a new model: the PRMs-IM. We show the performance of PRMs-IM on a real university relational database to identify students at risk
The vast majority of work in Machine Learning has focused on propositional data which is assumed to ...
Abstract. Multirelational classification algorithms search for patterns across multiple interlinked ...
The imbalanced dataset problem can occur in many domains, such as credit fraud, can— cer detection,...
Traditional learning techniques learn from flat data files with the assumption that each class has a...
Most data mining and pattern recognition techniques are designed for learning from at data files wit...
The majority of multi-class pattern classification techniques are proposed for learning from balance...
The majority of multi-class pattern classification techniques are proposed for learning from balance...
Abstract—We consider the problem of learning probabilistic models from relational data. One of the k...
The first book of its kind to review the current status and future direction of the exciting new bra...
International audienceProbabilistic Relational Models (PRMs) are directed probabilistic graphical mo...
La problématique des jeux de données déséquilibrées en apprentissage supervisé est apparue relativem...
International audienceProbabilistic Relational Models (PRMs) are directed probabilistic graphical mo...
Abstract. Existing relational learning approaches usually work on com-plete relational data, but rea...
Classification of imbalanced data is an important research problem as most of the data encountered i...
The attached document may provide the author's accepted version of a published work. See Citati...
The vast majority of work in Machine Learning has focused on propositional data which is assumed to ...
Abstract. Multirelational classification algorithms search for patterns across multiple interlinked ...
The imbalanced dataset problem can occur in many domains, such as credit fraud, can— cer detection,...
Traditional learning techniques learn from flat data files with the assumption that each class has a...
Most data mining and pattern recognition techniques are designed for learning from at data files wit...
The majority of multi-class pattern classification techniques are proposed for learning from balance...
The majority of multi-class pattern classification techniques are proposed for learning from balance...
Abstract—We consider the problem of learning probabilistic models from relational data. One of the k...
The first book of its kind to review the current status and future direction of the exciting new bra...
International audienceProbabilistic Relational Models (PRMs) are directed probabilistic graphical mo...
La problématique des jeux de données déséquilibrées en apprentissage supervisé est apparue relativem...
International audienceProbabilistic Relational Models (PRMs) are directed probabilistic graphical mo...
Abstract. Existing relational learning approaches usually work on com-plete relational data, but rea...
Classification of imbalanced data is an important research problem as most of the data encountered i...
The attached document may provide the author's accepted version of a published work. See Citati...
The vast majority of work in Machine Learning has focused on propositional data which is assumed to ...
Abstract. Multirelational classification algorithms search for patterns across multiple interlinked ...
The imbalanced dataset problem can occur in many domains, such as credit fraud, can— cer detection,...