The problem addressed in this paper concerns the multi-classifier generation by a Random Subspace method. In the random subspace method the classifiers are constructed in random subspaces of the data feature space. In this work we propose an evolved feature weighting approach: in each subspace the features are multiplied by a weight factor for minimizing the error rate in the training set. An efficient method based on Particle Swarm Optimization is here proposed for finding a set of weights for each feature in each subspace. The performance improvement with respect to the state-of-the-art approaches is validated through experiments with several benchmark datasets
Abstract—We propose a novel approach to multi-class boosting classification in which multiple classe...
We propose a novel boosting approach to multiclass classification problems, in which multiple classe...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
The problem addressed in this paper concerns the multi-classifier generation by a Random Subspace me...
© 2019 Association for Computing Machinery. Ensemble classifiers improve the classification performa...
A popular method for creating an accurate classifier from a set of training data is to build severa...
Ensemble learning is a widely used technique in Data Mining, this method allows us to aggregate mode...
The random subspace method (RSM) is one of the ensemble learning algorithms widely used in pattern c...
a.kolcz @ ieee.org Handling massive datasets is a difficult problem not only due to prohibitively la...
Missing data in real world applications is not an uncommon occurrence. It is not unusual for trainin...
In this paper we make an extensive study of different methods for building ensembles of classifiers....
The randomized-feature approach has been successfully employed in large-scale kernel approximation a...
We have presented a classification framework that combines multiple heterogeneous classifiers in the...
Randomization-based techniques for classifier ensemble construction, like Bagging and Random Forests...
Abstract—We propose a novel boosting approach to multi-class classification problems, in which multi...
Abstract—We propose a novel approach to multi-class boosting classification in which multiple classe...
We propose a novel boosting approach to multiclass classification problems, in which multiple classe...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
The problem addressed in this paper concerns the multi-classifier generation by a Random Subspace me...
© 2019 Association for Computing Machinery. Ensemble classifiers improve the classification performa...
A popular method for creating an accurate classifier from a set of training data is to build severa...
Ensemble learning is a widely used technique in Data Mining, this method allows us to aggregate mode...
The random subspace method (RSM) is one of the ensemble learning algorithms widely used in pattern c...
a.kolcz @ ieee.org Handling massive datasets is a difficult problem not only due to prohibitively la...
Missing data in real world applications is not an uncommon occurrence. It is not unusual for trainin...
In this paper we make an extensive study of different methods for building ensembles of classifiers....
The randomized-feature approach has been successfully employed in large-scale kernel approximation a...
We have presented a classification framework that combines multiple heterogeneous classifiers in the...
Randomization-based techniques for classifier ensemble construction, like Bagging and Random Forests...
Abstract—We propose a novel boosting approach to multi-class classification problems, in which multi...
Abstract—We propose a novel approach to multi-class boosting classification in which multiple classe...
We propose a novel boosting approach to multiclass classification problems, in which multiple classe...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...