We present a general framework for multidimensional classification that cap- tures the pairwise interactions between class variables. The pairwise class inter- actions are encoded using a collection of base classifiers (Phase 1), for which the class predictions are combined in a Markov random field that is subsequently used for multidimensional inference (Phase 2); thus, the framework can be positioned between multilabel Bayesian classifiers and label transformation-based approaches. Our proposal leads to a general framework supporting a wide range of base classifiers in the first phase as well as different inference methods in the second phase. We describe the basic framework and its main properties, as well as strategies for ensuring the ...
This study presents a review of the recent advances in performing inference in probabilistic classif...
Multi-class classification problems can be efficiently solved by partitioning the original problem i...
We discuss a strategy for polychotomous classification that involves estimating class probabilities ...
In multidimensional classification the goal is to assign an instance to a set of different classes. ...
The objective of multi-dimensional classification is to learn a function that accurately maps each d...
A classical supervised classification task tries to predict a single class variable based on a data ...
AbstractMulti-dimensional classification aims at finding a function that assigns a vector of class v...
We present a novel hierarchical approach to multi-class classification which is generic in that it c...
We introduce the family of multi-dimensional Bayesian network classifiers. These clas-sifiers includ...
Multi-dimensional classification aims at finding a function that assigns a vector of class values to...
Multidimensional Bayesian network classifiers have gained popularity over the last few years due to ...
We describe a new algorithmic framework for learning multiclass categorization problems. In this fra...
Multidimensional classification has become one of the most relevant topics in view of the many domai...
Multi-dimensional classification (MDC) is the supervised learning problem where an instance is assoc...
Multi-dimensional Bayesian network classifiers (MBCs) are probabilistic graphical models tailored to...
This study presents a review of the recent advances in performing inference in probabilistic classif...
Multi-class classification problems can be efficiently solved by partitioning the original problem i...
We discuss a strategy for polychotomous classification that involves estimating class probabilities ...
In multidimensional classification the goal is to assign an instance to a set of different classes. ...
The objective of multi-dimensional classification is to learn a function that accurately maps each d...
A classical supervised classification task tries to predict a single class variable based on a data ...
AbstractMulti-dimensional classification aims at finding a function that assigns a vector of class v...
We present a novel hierarchical approach to multi-class classification which is generic in that it c...
We introduce the family of multi-dimensional Bayesian network classifiers. These clas-sifiers includ...
Multi-dimensional classification aims at finding a function that assigns a vector of class values to...
Multidimensional Bayesian network classifiers have gained popularity over the last few years due to ...
We describe a new algorithmic framework for learning multiclass categorization problems. In this fra...
Multidimensional classification has become one of the most relevant topics in view of the many domai...
Multi-dimensional classification (MDC) is the supervised learning problem where an instance is assoc...
Multi-dimensional Bayesian network classifiers (MBCs) are probabilistic graphical models tailored to...
This study presents a review of the recent advances in performing inference in probabilistic classif...
Multi-class classification problems can be efficiently solved by partitioning the original problem i...
We discuss a strategy for polychotomous classification that involves estimating class probabilities ...