International audienceLet (X,Y) be a X x {0,1}-valued random pair and consider a sample (X-1, Y-1),..., (X-n, Y-n.) drawn from the distribution of (X, Y). We aim at constructing from this sample a classifier that is a function which would predict the value of Y from the observation of X. The special case where X is a functional space is of particular interest due to the so called curse of dimensionality. In a recent paper, Biau et al. [1] propose to filter the Xi's in the Fourier basis and to apply the classical k-Nearest Neighbor rule to the first d coefficients of the expansion. The selection of both k and d is made automatically via a penalized criterion. We extend this study, and note here the penalty used by Biau et al. is too heavy wh...
International audienceWe consider the binary supervised classification problem with the Gaussian fun...
We derive a new asymptotic expansion for the global excess risk of a local-k-nearest neighbour class...
Let X be a random element in a metric space (F,d), and let Y be a random variable with value 0 or 1....
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
Bayes classifiers for functional data pose a challenge. One difficulty is that probability density f...
104 pagesWe propose original nonparametric and semiparametric approaches to model the relationship b...
Let (X,Y) be a random pair taking values in , where is an infinite dimensional separable Hilbert spa...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
Given an n-sample of random vectors (Xi,Yi)1=i=n whose joint law is unknown, the long-standing probl...
Bayes classifiers for functional data pose a challenge. This is because probability density...
This paper develops a new class of functional depths. A generic member of this class is coined Jth o...
Abstract. Linear discriminant analysis with binary response is considered when the predictor is a fu...
Abstract Kernel methods represent one of the most powerful tools in machine learning to tackle probl...
International audienceWe consider the binary classification problem. Given an i.i.d. sample drawn fr...
This report deals with the problem of learning to classify observations from a mixture of random var...
International audienceWe consider the binary supervised classification problem with the Gaussian fun...
We derive a new asymptotic expansion for the global excess risk of a local-k-nearest neighbour class...
Let X be a random element in a metric space (F,d), and let Y be a random variable with value 0 or 1....
International audienceGiven an n-sample of random vectors (Xi, Yi) 1≤i≤n whose joint law is unknown,...
Bayes classifiers for functional data pose a challenge. One difficulty is that probability density f...
104 pagesWe propose original nonparametric and semiparametric approaches to model the relationship b...
Let (X,Y) be a random pair taking values in , where is an infinite dimensional separable Hilbert spa...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
Given an n-sample of random vectors (Xi,Yi)1=i=n whose joint law is unknown, the long-standing probl...
Bayes classifiers for functional data pose a challenge. This is because probability density...
This paper develops a new class of functional depths. A generic member of this class is coined Jth o...
Abstract. Linear discriminant analysis with binary response is considered when the predictor is a fu...
Abstract Kernel methods represent one of the most powerful tools in machine learning to tackle probl...
International audienceWe consider the binary classification problem. Given an i.i.d. sample drawn fr...
This report deals with the problem of learning to classify observations from a mixture of random var...
International audienceWe consider the binary supervised classification problem with the Gaussian fun...
We derive a new asymptotic expansion for the global excess risk of a local-k-nearest neighbour class...
Let X be a random element in a metric space (F,d), and let Y be a random variable with value 0 or 1....