Ensemble classifiers, formed by the combination of multiple weak learners, have been shown to outperform ordinary classification methods in that the former decrease bias, variance and/or improve predictions. These classifiers, however, can still result in low prediction performance when used with the wrong choice of their hyper-parameters values and/or when there are noisy features in the data. Thus, feature selection and fine tuning hyper-parameter could improve predictive accuracy of ensemble classifiers. This thesis first investigates the effect of feature selection on three methods: Random Forest (RF), Optimal Trees Ensemble (OTE) and Random Projection Ensembles (RP) in high dimensional settings. To this end, LASSO has been considered f...
Ensemble classifier approaches either exploit the input feature space also known as the dataset attr...
The bootstrap aggregating procedure at the core of ensemble tree classifiers reduces, in most cases,...
In this paper we make an extensive study of different methods for building ensembles of classifiers....
Random Projections (RP) ensemble classifiers allow to improve classification accuracy while extendin...
The predictive performance of a random forest ensemble is highly associated with the strength of ind...
Ensemble models, such as bagging (Breiman, 1996), random forests (Breiman, 2001a), and boosting (Fre...
We introduce a very general method for high dimensional classification, based on careful combination...
Classification is a process where a classifier predicts a class label to an object using the set of ...
peer reviewedWe adapt the idea of random projections applied to the out- put space, so as to enhance...
Random Forests (RF) of tree classifiers are a popular ensemble method for classification. RF have sh...
Tree-based ensemble methods, such as random forests and extremely randomized trees, are methods of c...
We introduce a very general method for high-dimensional classification, based on careful combination...
Breiman (2001a,b) has recently developed an ensemble classification and regression approach that dis...
When dealing with high-dimensional data and, in particular, when the number of at- tributes p is lar...
Predictive performance of a random forest ensemble is highly associated with the strength of individ...
Ensemble classifier approaches either exploit the input feature space also known as the dataset attr...
The bootstrap aggregating procedure at the core of ensemble tree classifiers reduces, in most cases,...
In this paper we make an extensive study of different methods for building ensembles of classifiers....
Random Projections (RP) ensemble classifiers allow to improve classification accuracy while extendin...
The predictive performance of a random forest ensemble is highly associated with the strength of ind...
Ensemble models, such as bagging (Breiman, 1996), random forests (Breiman, 2001a), and boosting (Fre...
We introduce a very general method for high dimensional classification, based on careful combination...
Classification is a process where a classifier predicts a class label to an object using the set of ...
peer reviewedWe adapt the idea of random projections applied to the out- put space, so as to enhance...
Random Forests (RF) of tree classifiers are a popular ensemble method for classification. RF have sh...
Tree-based ensemble methods, such as random forests and extremely randomized trees, are methods of c...
We introduce a very general method for high-dimensional classification, based on careful combination...
Breiman (2001a,b) has recently developed an ensemble classification and regression approach that dis...
When dealing with high-dimensional data and, in particular, when the number of at- tributes p is lar...
Predictive performance of a random forest ensemble is highly associated with the strength of individ...
Ensemble classifier approaches either exploit the input feature space also known as the dataset attr...
The bootstrap aggregating procedure at the core of ensemble tree classifiers reduces, in most cases,...
In this paper we make an extensive study of different methods for building ensembles of classifiers....