International audienceIn high-dimensional classification problems it is infeasible to include enough training samples to cover the class regions densely. Irregularities in the resulting sparse sample distributions cause local classifiers such as Nearest Neighbors (NN) and kernel methods to have irregular decision boundaries. One solution is to "fill in the holes" by building a convex model of the region spanned by the training samples of each class and classifying examples based on their distances to these approximate models. Methods of this kind based on affine and convex hulls and bounding hyperspheres have already been studied. Here we propose a method based on the bounding hyperdisk of each class - the intersection of the affine hull an...
Abstract—A classifier that couples nearest-subspace classifica-tion with a distance-weighted Tikhono...
Nearest neighbor classification assumes locally constant class conditional probabilities. This assum...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
International audienceWe introduce a large margin linear binary classification framework that approx...
This paper introduces an efficient geometric approach for data classification that can build class m...
International audienceIn case of insufficient data samples in highdimensional classification problem...
The nearest subspace methods (NSM) are a category of classification methods widely applied to classi...
Guided by an initial idea of building a complex (non linear) decision surface with maximal local mar...
In this paper, we establish a novel separating hyperplane classification (SHC) framework to unify th...
International audienceNearest neighbour classifiers and related kernel methods often perform poorly ...
Abstract. Consider the classification task of assigning a test object to one of two or more possible...
Selecting suitable data for neural network training, out of a larger set, is an important task. For ...
The classification of high dimensional data with kernel methods is considered in this article. Explo...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
International audienceThe classification of high dimensional data with kernel methods is considered i...
Abstract—A classifier that couples nearest-subspace classifica-tion with a distance-weighted Tikhono...
Nearest neighbor classification assumes locally constant class conditional probabilities. This assum...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
International audienceWe introduce a large margin linear binary classification framework that approx...
This paper introduces an efficient geometric approach for data classification that can build class m...
International audienceIn case of insufficient data samples in highdimensional classification problem...
The nearest subspace methods (NSM) are a category of classification methods widely applied to classi...
Guided by an initial idea of building a complex (non linear) decision surface with maximal local mar...
In this paper, we establish a novel separating hyperplane classification (SHC) framework to unify th...
International audienceNearest neighbour classifiers and related kernel methods often perform poorly ...
Abstract. Consider the classification task of assigning a test object to one of two or more possible...
Selecting suitable data for neural network training, out of a larger set, is an important task. For ...
The classification of high dimensional data with kernel methods is considered in this article. Explo...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
International audienceThe classification of high dimensional data with kernel methods is considered i...
Abstract—A classifier that couples nearest-subspace classifica-tion with a distance-weighted Tikhono...
Nearest neighbor classification assumes locally constant class conditional probabilities. This assum...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...