Bayes classifiers for functional data pose a challenge. This is because probability density functions do not exist for functional data. As a consequence, the classical Bayes classifier using density quotients needs to be modified. We propose to use density ratios of projections on a sequence of eigenfunctions that are common to the groups to be classified. The density ratios can then be factored into density ratios of individual functional principal components whence the classification problem is reduced to a sequence of nonparametric one-dimensional density estimates. This is an extension to functional data of some of the very earliest nonparametric Bayes classifiers that were ...
The problem of performing functional linear regression when the response variable is represented as ...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
International audienceComplex data analysis is a central topic of modern statistics and learning sys...
Bayes classifiers for functional data pose a challenge. This is because probability density...
Bayes classifiers for functional data pose a challenge. One difficulty is that probability density f...
We introduce a new method for estimating density ratios using splines, as a generalization of a meth...
KeynoteProbability density functions are frequently used to characterize the distributional properti...
Probability density functions are frequently used to characterize the distributional properties of ...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
A fast nonparametric procedure for classifying functional data is introduced. It consists of a two-s...
A nonparametric approach combining generative models and func-tional data analysis is presented in t...
Functional principal component analysis (FPCA) has become the most widely used dimen-sion reduction ...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
Most of existing methods of functional data classification deal with one or a few processes. In this...
We are interested in unsupervised bayesian clustering for functional data. We generalize a data clus...
The problem of performing functional linear regression when the response variable is represented as ...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
International audienceComplex data analysis is a central topic of modern statistics and learning sys...
Bayes classifiers for functional data pose a challenge. This is because probability density...
Bayes classifiers for functional data pose a challenge. One difficulty is that probability density f...
We introduce a new method for estimating density ratios using splines, as a generalization of a meth...
KeynoteProbability density functions are frequently used to characterize the distributional properti...
Probability density functions are frequently used to characterize the distributional properties of ...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
A fast nonparametric procedure for classifying functional data is introduced. It consists of a two-s...
A nonparametric approach combining generative models and func-tional data analysis is presented in t...
Functional principal component analysis (FPCA) has become the most widely used dimen-sion reduction ...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
Most of existing methods of functional data classification deal with one or a few processes. In this...
We are interested in unsupervised bayesian clustering for functional data. We generalize a data clus...
The problem of performing functional linear regression when the response variable is represented as ...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
International audienceComplex data analysis is a central topic of modern statistics and learning sys...