We consider nonparametric estimation of a covariance function on the unit square, given a sample of discretely observed fragments of functional data. When each sample path is observed only on a subinterval of length , one has no statistical information on the unknown covariance outside a -band around the diagonal. The problem seems unidentifiable without parametric assumptions, but we show that nonparametric estimation is feasible under suitable smoothness and rank conditions on the unknown covariance. This remains true even when the observations are discrete, and we give precise deterministic conditions on how fine the observation grid needs to be relative to the rank and fragment length for identifiability to hold true. We show that our c...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
International audienceWe consider the problem of recovering of continuous multi-dimensional function...
The density function of the limiting spectral distribution of general sample covariance matrices is ...
We consider estimation of mean and covariance functions of functional snippets, which are short segm...
This thesis focuses on non-parametric covariance estimation for random surfaces, i.e.~functional dat...
We propose a nonparametric test for the equality of the covariance structures in two functional samp...
International audienceIn functional data analysis it is usually assumed that all functions are compl...
Abstract: We consider nonparametric estimation of the covariance function for dense functional data ...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
We propose a model selection approach for covariance estimation of a multi-dimensional stochastic pr...
We propose a differential geometric approach for building families of low-rank covariance matrices, ...
Functional data analyses typically proceed by smoothing, followed by functional PCA. This paradigm i...
This paper considers identi\u85cation and estimation of a nonparametric regression model with an uno...
Abstract. Several nonparametric procedures have been proposed in the spatial setting for covariance ...
The assumption of separability of the covariance operator for a random image or hypersurface can be ...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
International audienceWe consider the problem of recovering of continuous multi-dimensional function...
The density function of the limiting spectral distribution of general sample covariance matrices is ...
We consider estimation of mean and covariance functions of functional snippets, which are short segm...
This thesis focuses on non-parametric covariance estimation for random surfaces, i.e.~functional dat...
We propose a nonparametric test for the equality of the covariance structures in two functional samp...
International audienceIn functional data analysis it is usually assumed that all functions are compl...
Abstract: We consider nonparametric estimation of the covariance function for dense functional data ...
We propose straightforward nonparametric estimators for the mean and the covariance functions of fun...
We propose a model selection approach for covariance estimation of a multi-dimensional stochastic pr...
We propose a differential geometric approach for building families of low-rank covariance matrices, ...
Functional data analyses typically proceed by smoothing, followed by functional PCA. This paradigm i...
This paper considers identi\u85cation and estimation of a nonparametric regression model with an uno...
Abstract. Several nonparametric procedures have been proposed in the spatial setting for covariance ...
The assumption of separability of the covariance operator for a random image or hypersurface can be ...
We use ideas from estimating function theory to derive new, simply computed consistent covariance ma...
International audienceWe consider the problem of recovering of continuous multi-dimensional function...
The density function of the limiting spectral distribution of general sample covariance matrices is ...