This paper proposes a simple yet powerful ensemble classifier, called Random Hyperboxes, constructed from individual hyperbox-based classifiers trained on the random subsets of sample and feature spaces of the training set. We also show a generalization error bound of the proposed classifier based on the strength of the individual hyperbox-based classifiers as well as the correlation among them. The effectiveness of the proposed classifier is analyzed using a carefully selected illustrative example and compared empirically with other popular single and ensemble classifiers via 20 datasets using statistical testing methods. The experimental results confirmed that our proposed method outperformed other fuzzy min-max neural networks, ...
We introduce a very general method for high-dimensional classification, based on careful combination...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
Combining multiple classifiers, known as ensemble methods, can give substantial improvement in predi...
This article proposes a simple yet powerful ensemble classifier, called Random Hyperboxes, construct...
A Random Hyperboxes (RH) classifier is a simple but powerful randomization-based ensemble model, inc...
none3In this paper we make an extensive study of different methods for building ensembles of classif...
a.kolcz @ ieee.org Handling massive datasets is a difficult problem not only due to prohibitively la...
University of Technology Sydney. Faculty of Engineering and Information Technology.Together with the...
Ensemble classifiers, formed by the combination of multiple weak learners, have been shown to outper...
A popular method for creating an accurate classifier from a set of training data is to build severa...
In many machine learning scenarios, looking for the best classifier that fits a particular dataset c...
Ensemble learning, an approach in Machine Learning, makes decisions based on the collective decision...
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 use of ensemble classifiers, e.g., Bagging and Boost-ing, is wide spread to machine learning. Ho...
We introduce a very general method for high-dimensional classification, based on careful combination...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
Combining multiple classifiers, known as ensemble methods, can give substantial improvement in predi...
This article proposes a simple yet powerful ensemble classifier, called Random Hyperboxes, construct...
A Random Hyperboxes (RH) classifier is a simple but powerful randomization-based ensemble model, inc...
none3In this paper we make an extensive study of different methods for building ensembles of classif...
a.kolcz @ ieee.org Handling massive datasets is a difficult problem not only due to prohibitively la...
University of Technology Sydney. Faculty of Engineering and Information Technology.Together with the...
Ensemble classifiers, formed by the combination of multiple weak learners, have been shown to outper...
A popular method for creating an accurate classifier from a set of training data is to build severa...
In many machine learning scenarios, looking for the best classifier that fits a particular dataset c...
Ensemble learning, an approach in Machine Learning, makes decisions based on the collective decision...
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 use of ensemble classifiers, e.g., Bagging and Boost-ing, is wide spread to machine learning. Ho...
We introduce a very general method for high-dimensional classification, based on careful combination...
The Ensemble of Classifiers (EoC) has been shown to be effective in improving the performance of sin...
Combining multiple classifiers, known as ensemble methods, can give substantial improvement in predi...