International audienceIn functional data analysis it is usually assumed that all functions are completely, densely or sparsely observed on the same domain. Recent applications have brought attention to situations where each functional variable may be observed only on a subset of the domain while no information about the function is available on the complement. Various advanced methods for such partially observed functional data have already been developed but, interestingly, some essential methods, such as K-sample tests of equal means or covariances and confidence intervals for eigenvalues and eigenfunctions, are lacking. Without requiring any complete curves in the data, we derive asymptotic distributions of estimators of the mean functio...
Classical functional data analysis (FDA) is based on directly observed random curves. However, in a ...
We consider selected topics in estimation and testing of functional data. In many applications of fu...
We consider estimation of mean and covariance functions of functional snippets, which are short segm...
This thesis is devoted to the development of new methodologies for the classication of partially obs...
We suggest a new method, with very wide applicability, for testing semiparametric hypotheses about f...
New estimators for the mean and the covariance function for partially observed functional data are p...
© 2012 Dr. Stephen Edward LaneAs the amount of data captured in experimental and observational situa...
We propose a nonparametric method to perform functional principal components analysis for the case o...
We propose a novel bootstrap-based methodology for testing hypotheses about equality of certain char...
Functional data are usually assumed to be observed on a common domain. However, it is often the case...
Partially observed functional data are frequently encountered in applications and are the object of ...
In many real world studies, the aim is to predict a real value of interest from the observation of a...
The partially linear model Y DXT¯C º.Z/C has been studied extensively when data are completely obse...
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
We consider functional data analysis when the observations at each location are functional rather th...
Classical functional data analysis (FDA) is based on directly observed random curves. However, in a ...
We consider selected topics in estimation and testing of functional data. In many applications of fu...
We consider estimation of mean and covariance functions of functional snippets, which are short segm...
This thesis is devoted to the development of new methodologies for the classication of partially obs...
We suggest a new method, with very wide applicability, for testing semiparametric hypotheses about f...
New estimators for the mean and the covariance function for partially observed functional data are p...
© 2012 Dr. Stephen Edward LaneAs the amount of data captured in experimental and observational situa...
We propose a nonparametric method to perform functional principal components analysis for the case o...
We propose a novel bootstrap-based methodology for testing hypotheses about equality of certain char...
Functional data are usually assumed to be observed on a common domain. However, it is often the case...
Partially observed functional data are frequently encountered in applications and are the object of ...
In many real world studies, the aim is to predict a real value of interest from the observation of a...
The partially linear model Y DXT¯C º.Z/C has been studied extensively when data are completely obse...
The aim of this dissertation is to create a unified and practical approach to the analysis of correl...
We consider functional data analysis when the observations at each location are functional rather th...
Classical functional data analysis (FDA) is based on directly observed random curves. However, in a ...
We consider selected topics in estimation and testing of functional data. In many applications of fu...
We consider estimation of mean and covariance functions of functional snippets, which are short segm...