The random subspace method (RSM) is one of the ensemble learning algorithms widely used in pattern classification applications. RSM has the advantages of small error rate and improved noise insensitivity due to ensemble construction of the base-learners. However, randomness may cause a reduction of the final ensemble decision performance because of contributions of classifiers trained by subsets with low class separability. In this study, we present a new and improved version of the RSM by introducing a weighting factor into the combination phase. One of the class separability criteria, J3, is used as a weighting factor to improve the classification performance and eliminate the drawbacks of the standard RSM algorithm. The randomly selected...
We have presented a classification framework that combines multiple heterogeneous classifiers in the...
In this paper, we propose a weighted multiple classifier framework based on random projections. Simi...
Randomization-based techniques for classifier ensemble construction, like Bagging and Random Forests...
The problem addressed in this letter concerns the multiclassifier generation by a random subspace me...
This paper presents the comparison of three subsampling techniques for random subspace ensemble clas...
The goal of ensemble construction with several classifiers is to achieve better generalization abili...
none3In this paper we make an extensive study of different methods for building ensembles of classif...
A popular method for creating an accurate classifier from a set of training data is to build severa...
© 2019 Association for Computing Machinery. Ensemble classifiers improve the classification performa...
We present a novel adaptation of the random subspace learning approach to regression analysis and cl...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
Ensemble learning is a widely used technique in Data Mining, this method allows us to aggregate mode...
Several studies have shown that combining machine learning models in an appropriate way will introdu...
Scherbart A, Nattkemper TW. The Diversity of Regression Ensembles Combining Bagging and Random Subsp...
Discuss approaches to combine techniques used by ensemble learning methods. Randomness which is used...
We have presented a classification framework that combines multiple heterogeneous classifiers in the...
In this paper, we propose a weighted multiple classifier framework based on random projections. Simi...
Randomization-based techniques for classifier ensemble construction, like Bagging and Random Forests...
The problem addressed in this letter concerns the multiclassifier generation by a random subspace me...
This paper presents the comparison of three subsampling techniques for random subspace ensemble clas...
The goal of ensemble construction with several classifiers is to achieve better generalization abili...
none3In this paper we make an extensive study of different methods for building ensembles of classif...
A popular method for creating an accurate classifier from a set of training data is to build severa...
© 2019 Association for Computing Machinery. Ensemble classifiers improve the classification performa...
We present a novel adaptation of the random subspace learning approach to regression analysis and cl...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
Ensemble learning is a widely used technique in Data Mining, this method allows us to aggregate mode...
Several studies have shown that combining machine learning models in an appropriate way will introdu...
Scherbart A, Nattkemper TW. The Diversity of Regression Ensembles Combining Bagging and Random Subsp...
Discuss approaches to combine techniques used by ensemble learning methods. Randomness which is used...
We have presented a classification framework that combines multiple heterogeneous classifiers in the...
In this paper, we propose a weighted multiple classifier framework based on random projections. Simi...
Randomization-based techniques for classifier ensemble construction, like Bagging and Random Forests...