We examine the performance of an ensemble of randomly-projected Fisher Linear Discriminant classifiers, focusing on the case when there are fewer training observations than data dimensions. Our ensemble is learned from a sequence of randomly-projected representations of the original high dimensional data and therefore for this approach data can be collected, stored and processed in such a compressed form. The specific form and simplicity of this ensemble permits a direct and much more detailed analysis than existing generic tools in previous works. In particular, we are able to derive the exact form of the generalization error of our ensemble, conditional on the training set, and based on this we give theoretical guarantees which directly l...
The random subspace and the random projection methods are investigated and compared as techniques fo...
Ensemble classifiers, formed by the combination of multiple weak learners, have been shown to outper...
When dealing with high-dimensional data and, in particular, when the number of at- tributes p is lar...
Abstract. We prove theoretical guarantees for an averaging-ensemble of randomly projected Fisher Lin...
We prove theoretical guarantees for an averaging-ensemble of randomly projected Fisher linear discri...
We examine the performance of an ensemble of randomly-projected Fisher Linear Discriminant classifie...
Efficient dimensionality reduction by random projections (RP) gains popularity, hence the learning g...
We introduce a very general method for high-dimensional classification, based on careful combination...
The enormous power of modern computers has made possible the statistical modelling of data with dime...
We introduce a very general method for high dimensional classification, based on careful combination...
We derive sharp bounds on the generalization error of a generic linear classifier trained by empiric...
The Pseudo Fisher Linear Discriminant (PFLD) based on a pseudo-inverse technique shows a peaking beh...
Random Projections (RP) ensemble classifiers allow to improve classification accuracy while extendin...
Ensemble learning, an approach in Machine Learning, makes decisions based on the collective decision...
Randomization-based techniques for classifier ensemble construction, like Bagging and Random Forests...
The random subspace and the random projection methods are investigated and compared as techniques fo...
Ensemble classifiers, formed by the combination of multiple weak learners, have been shown to outper...
When dealing with high-dimensional data and, in particular, when the number of at- tributes p is lar...
Abstract. We prove theoretical guarantees for an averaging-ensemble of randomly projected Fisher Lin...
We prove theoretical guarantees for an averaging-ensemble of randomly projected Fisher linear discri...
We examine the performance of an ensemble of randomly-projected Fisher Linear Discriminant classifie...
Efficient dimensionality reduction by random projections (RP) gains popularity, hence the learning g...
We introduce a very general method for high-dimensional classification, based on careful combination...
The enormous power of modern computers has made possible the statistical modelling of data with dime...
We introduce a very general method for high dimensional classification, based on careful combination...
We derive sharp bounds on the generalization error of a generic linear classifier trained by empiric...
The Pseudo Fisher Linear Discriminant (PFLD) based on a pseudo-inverse technique shows a peaking beh...
Random Projections (RP) ensemble classifiers allow to improve classification accuracy while extendin...
Ensemble learning, an approach in Machine Learning, makes decisions based on the collective decision...
Randomization-based techniques for classifier ensemble construction, like Bagging and Random Forests...
The random subspace and the random projection methods are investigated and compared as techniques fo...
Ensemble classifiers, formed by the combination of multiple weak learners, have been shown to outper...
When dealing with high-dimensional data and, in particular, when the number of at- tributes p is lar...